10 Methods of Data Presentation with 5 Great Tips to Practice, Best in 2024

Leah Nguyen • 05 April, 2024 • 17 min read

There are different ways of presenting data, so which one is suited you the most? You can end deathly boring and ineffective data presentation right now with our 10 methods of data presentation . Check out the examples from each technique!

Have you ever presented a data report to your boss/coworkers/teachers thinking it was super dope like you’re some cyber hacker living in the Matrix, but all they saw was a pile of static numbers that seemed pointless and didn’t make sense to them?

Understanding digits is rigid . Making people from non-analytical backgrounds understand those digits is even more challenging.

How can you clear up those confusing numbers in the types of presentation that have the flawless clarity of a diamond? So, let’s check out best way to present data. 💎

Table of Contents

  • What are Methods of Data Presentations?
  • #1 – Tabular

#3 – Pie chart

#4 – bar chart, #5 – histogram, #6 – line graph, #7 – pictogram graph, #8 – radar chart, #9 – heat map, #10 – scatter plot.

  • 5 Mistakes to Avoid
  • Best Method of Data Presentation

Frequently Asked Questions

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  • Types of Presentation

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What are Methods of Data Presentation?

The term ’data presentation’ relates to the way you present data in a way that makes even the most clueless person in the room understand. 

Some say it’s witchcraft (you’re manipulating the numbers in some ways), but we’ll just say it’s the power of turning dry, hard numbers or digits into a visual showcase that is easy for people to digest.

Presenting data correctly can help your audience understand complicated processes, identify trends, and instantly pinpoint whatever is going on without exhausting their brains.

Good data presentation helps…

  • Make informed decisions and arrive at positive outcomes . If you see the sales of your product steadily increase throughout the years, it’s best to keep milking it or start turning it into a bunch of spin-offs (shoutout to Star Wars👀).
  • Reduce the time spent processing data . Humans can digest information graphically 60,000 times faster than in the form of text. Grant them the power of skimming through a decade of data in minutes with some extra spicy graphs and charts.
  • Communicate the results clearly . Data does not lie. They’re based on factual evidence and therefore if anyone keeps whining that you might be wrong, slap them with some hard data to keep their mouths shut.
  • Add to or expand the current research . You can see what areas need improvement, as well as what details often go unnoticed while surfing through those little lines, dots or icons that appear on the data board.

Methods of Data Presentation and Examples

Imagine you have a delicious pepperoni, extra-cheese pizza. You can decide to cut it into the classic 8 triangle slices, the party style 12 square slices, or get creative and abstract on those slices. 

There are various ways for cutting a pizza and you get the same variety with how you present your data. In this section, we will bring you the 10 ways to slice a pizza – we mean to present your data – that will make your company’s most important asset as clear as day. Let’s dive into 10 ways to present data efficiently.

#1 – Tabular 

Among various types of data presentation, tabular is the most fundamental method, with data presented in rows and columns. Excel or Google Sheets would qualify for the job. Nothing fancy.

a table displaying the changes in revenue between the year 2017 and 2018 in the East, West, North, and South region

This is an example of a tabular presentation of data on Google Sheets. Each row and column has an attribute (year, region, revenue, etc.), and you can do a custom format to see the change in revenue throughout the year.

When presenting data as text, all you do is write your findings down in paragraphs and bullet points, and that’s it. A piece of cake to you, a tough nut to crack for whoever has to go through all of the reading to get to the point.

  • 65% of email users worldwide access their email via a mobile device.
  • Emails that are optimised for mobile generate 15% higher click-through rates.
  • 56% of brands using emojis in their email subject lines had a higher open rate.

(Source: CustomerThermometer )

All the above quotes present statistical information in textual form. Since not many people like going through a wall of texts, you’ll have to figure out another route when deciding to use this method, such as breaking the data down into short, clear statements, or even as catchy puns if you’ve got the time to think of them.

A pie chart (or a ‘donut chart’ if you stick a hole in the middle of it) is a circle divided into slices that show the relative sizes of data within a whole. If you’re using it to show percentages, make sure all the slices add up to 100%.

Methods of data presentation

The pie chart is a familiar face at every party and is usually recognised by most people. However, one setback of using this method is our eyes sometimes can’t identify the differences in slices of a circle, and it’s nearly impossible to compare similar slices from two different pie charts, making them the villains in the eyes of data analysts.

a half-eaten pie chart

Bonus example: A literal ‘pie’ chart! 🥧

The bar chart is a chart that presents a bunch of items from the same category, usually in the form of rectangular bars that are placed at an equal distance from each other. Their heights or lengths depict the values they represent.

They can be as simple as this:

a simple bar chart example

Or more complex and detailed like this example of presentation of data. Contributing to an effective statistic presentation, this one is a grouped bar chart that not only allows you to compare categories but also the groups within them as well.

an example of a grouped bar chart

Similar in appearance to the bar chart but the rectangular bars in histograms don’t often have the gap like their counterparts.

Instead of measuring categories like weather preferences or favourite films as a bar chart does, a histogram only measures things that can be put into numbers.

an example of a histogram chart showing the distribution of students' score for the IQ test

Teachers can use presentation graphs like a histogram to see which score group most of the students fall into, like in this example above.

Recordings to ways of displaying data, we shouldn’t overlook the effectiveness of line graphs. Line graphs are represented by a group of data points joined together by a straight line. There can be one or more lines to compare how several related things change over time. 

an example of the line graph showing the population of bears from 2017 to 2022

On a line chart’s horizontal axis, you usually have text labels, dates or years, while the vertical axis usually represents the quantity (e.g.: budget, temperature or percentage).

A pictogram graph uses pictures or icons relating to the main topic to visualise a small dataset. The fun combination of colours and illustrations makes it a frequent use at schools.

How to Create Pictographs and Icon Arrays in Visme-6 pictograph maker

Pictograms are a breath of fresh air if you want to stay away from the monotonous line chart or bar chart for a while. However, they can present a very limited amount of data and sometimes they are only there for displays and do not represent real statistics.

If presenting five or more variables in the form of a bar chart is too stuffy then you should try using a radar chart, which is one of the most creative ways to present data.

Radar charts show data in terms of how they compare to each other starting from the same point. Some also call them ‘spider charts’ because each aspect combined looks like a spider web.

a radar chart showing the text scores between two students

Radar charts can be a great use for parents who’d like to compare their child’s grades with their peers to lower their self-esteem. You can see that each angular represents a subject with a score value ranging from 0 to 100. Each student’s score across 5 subjects is highlighted in a different colour.

a radar chart showing the power distribution of a Pokemon

If you think that this method of data presentation somehow feels familiar, then you’ve probably encountered one while playing Pokémon .

A heat map represents data density in colours. The bigger the number, the more colour intense that data will be represented.

a heatmap showing the electoral votes among the states between two candidates

Most U.S citizens would be familiar with this data presentation method in geography. For elections, many news outlets assign a specific colour code to a state, with blue representing one candidate and red representing the other. The shade of either blue or red in each state shows the strength of the overall vote in that state.

a heatmap showing which parts the visitors click on in a website

Another great thing you can use a heat map for is to map what visitors to your site click on. The more a particular section is clicked the ‘hotter’ the colour will turn, from blue to bright yellow to red.

If you present your data in dots instead of chunky bars, you’ll have a scatter plot. 

A scatter plot is a grid with several inputs showing the relationship between two variables. It’s good at collecting seemingly random data and revealing some telling trends.

a scatter plot example showing the relationship between beach visitors each day and the average daily temperature

For example, in this graph, each dot shows the average daily temperature versus the number of beach visitors across several days. You can see that the dots get higher as the temperature increases, so it’s likely that hotter weather leads to more visitors.

5 Data Presentation Mistakes to Avoid

#1 – assume your audience understands what the numbers represent.

You may know all the behind-the-scenes of your data since you’ve worked with them for weeks, but your audience doesn’t.

a sales data board from Looker

Showing without telling only invites more and more questions from your audience, as they have to constantly make sense of your data, wasting the time of both sides as a result.

While showing your data presentations, you should tell them what the data are about before hitting them with waves of numbers first. You can use interactive activities such as polls , word clouds , online quiz and Q&A sections , combined with icebreaker games , to assess their understanding of the data and address any confusion beforehand.

#2 – Use the wrong type of chart

Charts such as pie charts must have a total of 100% so if your numbers accumulate to 193% like this example below, you’re definitely doing it wrong.

a bad example of using a pie chart in the 2012 presidential run

Before making a chart, ask yourself: what do I want to accomplish with my data? Do you want to see the relationship between the data sets, show the up and down trends of your data, or see how segments of one thing make up a whole?

Remember, clarity always comes first. Some data visualisations may look cool, but if they don’t fit your data, steer clear of them. 

#3 – Make it 3D

3D is a fascinating graphical presentation example. The third dimension is cool, but full of risks.

methods of data presentation are

Can you see what’s behind those red bars? Because we can’t either. You may think that 3D charts add more depth to the design, but they can create false perceptions as our eyes see 3D objects closer and bigger than they appear, not to mention they cannot be seen from multiple angles.

#4 – Use different types of charts to compare contents in the same category

methods of data presentation are

This is like comparing a fish to a monkey. Your audience won’t be able to identify the differences and make an appropriate correlation between the two data sets. 

Next time, stick to one type of data presentation only. Avoid the temptation of trying various data visualisation methods in one go and make your data as accessible as possible.

#5 – Bombard the audience with too much information

The goal of data presentation is to make complex topics much easier to understand, and if you’re bringing too much information to the table, you’re missing the point.

a very complicated data presentation with too much information on the screen

The more information you give, the more time it will take for your audience to process it all. If you want to make your data understandable and give your audience a chance to remember it, keep the information within it to an absolute minimum. You should set your session with open-ended questions , to avoid dead-communication!

What are the Best Methods of Data Presentation?

Finally, which is the best way to present data?

The answer is…

There is none 😄 Each type of presentation has its own strengths and weaknesses and the one you choose greatly depends on what you’re trying to do. 

For example:

  • Go for a scatter plot if you’re exploring the relationship between different data values, like seeing whether the sales of ice cream go up because of the temperature or because people are just getting more hungry and greedy each day?
  • Go for a line graph if you want to mark a trend over time. 
  • Go for a heat map if you like some fancy visualisation of the changes in a geographical location, or to see your visitors’ behaviour on your website.
  • Go for a pie chart (especially in 3D) if you want to be shunned by others because it was never a good idea👇

example of how a bad pie chart represents the data in a complicated way

What is chart presentation?

A chart presentation is a way of presenting data or information using visual aids such as charts, graphs, and diagrams. The purpose of a chart presentation is to make complex information more accessible and understandable for the audience.

When can I use charts for presentation?

Charts can be used to compare data, show trends over time, highlight patterns, and simplify complex information.

Why should use charts for presentation?

You should use charts to ensure your contents and visual look clean, as they are the visual representative, provide clarity, simplicity, comparison, contrast and super time-saving!

What are the 4 graphical methods of presenting data?

Histogram, Smoothed frequency graph, Pie diagram or Pie chart, Cumulative or ogive frequency graph, and Frequency Polygon.

Leah Nguyen

Leah Nguyen

Words that convert, stories that stick. I turn complex ideas into engaging narratives - helping audiences learn, remember, and take action.

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Home Blog Design Understanding Data Presentations (Guide + Examples)

Understanding Data Presentations (Guide + Examples)

Cover for guide on data presentation by SlideModel

In this age of overwhelming information, the skill to effectively convey data has become extremely valuable. Initiating a discussion on data presentation types involves thoughtful consideration of the nature of your data and the message you aim to convey. Different types of visualizations serve distinct purposes. Whether you’re dealing with how to develop a report or simply trying to communicate complex information, how you present data influences how well your audience understands and engages with it. This extensive guide leads you through the different ways of data presentation.

Table of Contents

What is a Data Presentation?

What should a data presentation include, line graphs, treemap chart, scatter plot, how to choose a data presentation type, recommended data presentation templates, common mistakes done in data presentation.

A data presentation is a slide deck that aims to disclose quantitative information to an audience through the use of visual formats and narrative techniques derived from data analysis, making complex data understandable and actionable. This process requires a series of tools, such as charts, graphs, tables, infographics, dashboards, and so on, supported by concise textual explanations to improve understanding and boost retention rate.

Data presentations require us to cull data in a format that allows the presenter to highlight trends, patterns, and insights so that the audience can act upon the shared information. In a few words, the goal of data presentations is to enable viewers to grasp complicated concepts or trends quickly, facilitating informed decision-making or deeper analysis.

Data presentations go beyond the mere usage of graphical elements. Seasoned presenters encompass visuals with the art of data storytelling , so the speech skillfully connects the points through a narrative that resonates with the audience. Depending on the purpose – inspire, persuade, inform, support decision-making processes, etc. – is the data presentation format that is better suited to help us in this journey.

To nail your upcoming data presentation, ensure to count with the following elements:

  • Clear Objectives: Understand the intent of your presentation before selecting the graphical layout and metaphors to make content easier to grasp.
  • Engaging introduction: Use a powerful hook from the get-go. For instance, you can ask a big question or present a problem that your data will answer. Take a look at our guide on how to start a presentation for tips & insights.
  • Structured Narrative: Your data presentation must tell a coherent story. This means a beginning where you present the context, a middle section in which you present the data, and an ending that uses a call-to-action. Check our guide on presentation structure for further information.
  • Visual Elements: These are the charts, graphs, and other elements of visual communication we ought to use to present data. This article will cover one by one the different types of data representation methods we can use, and provide further guidance on choosing between them.
  • Insights and Analysis: This is not just showcasing a graph and letting people get an idea about it. A proper data presentation includes the interpretation of that data, the reason why it’s included, and why it matters to your research.
  • Conclusion & CTA: Ending your presentation with a call to action is necessary. Whether you intend to wow your audience into acquiring your services, inspire them to change the world, or whatever the purpose of your presentation, there must be a stage in which you convey all that you shared and show the path to staying in touch. Plan ahead whether you want to use a thank-you slide, a video presentation, or which method is apt and tailored to the kind of presentation you deliver.
  • Q&A Session: After your speech is concluded, allocate 3-5 minutes for the audience to raise any questions about the information you disclosed. This is an extra chance to establish your authority on the topic. Check our guide on questions and answer sessions in presentations here.

Bar charts are a graphical representation of data using rectangular bars to show quantities or frequencies in an established category. They make it easy for readers to spot patterns or trends. Bar charts can be horizontal or vertical, although the vertical format is commonly known as a column chart. They display categorical, discrete, or continuous variables grouped in class intervals [1] . They include an axis and a set of labeled bars horizontally or vertically. These bars represent the frequencies of variable values or the values themselves. Numbers on the y-axis of a vertical bar chart or the x-axis of a horizontal bar chart are called the scale.

Presentation of the data through bar charts

Real-Life Application of Bar Charts

Let’s say a sales manager is presenting sales to their audience. Using a bar chart, he follows these steps.

Step 1: Selecting Data

The first step is to identify the specific data you will present to your audience.

The sales manager has highlighted these products for the presentation.

  • Product A: Men’s Shoes
  • Product B: Women’s Apparel
  • Product C: Electronics
  • Product D: Home Decor

Step 2: Choosing Orientation

Opt for a vertical layout for simplicity. Vertical bar charts help compare different categories in case there are not too many categories [1] . They can also help show different trends. A vertical bar chart is used where each bar represents one of the four chosen products. After plotting the data, it is seen that the height of each bar directly represents the sales performance of the respective product.

It is visible that the tallest bar (Electronics – Product C) is showing the highest sales. However, the shorter bars (Women’s Apparel – Product B and Home Decor – Product D) need attention. It indicates areas that require further analysis or strategies for improvement.

Step 3: Colorful Insights

Different colors are used to differentiate each product. It is essential to show a color-coded chart where the audience can distinguish between products.

  • Men’s Shoes (Product A): Yellow
  • Women’s Apparel (Product B): Orange
  • Electronics (Product C): Violet
  • Home Decor (Product D): Blue

Accurate bar chart representation of data with a color coded legend

Bar charts are straightforward and easily understandable for presenting data. They are versatile when comparing products or any categorical data [2] . Bar charts adapt seamlessly to retail scenarios. Despite that, bar charts have a few shortcomings. They cannot illustrate data trends over time. Besides, overloading the chart with numerous products can lead to visual clutter, diminishing its effectiveness.

For more information, check our collection of bar chart templates for PowerPoint .

Line graphs help illustrate data trends, progressions, or fluctuations by connecting a series of data points called ‘markers’ with straight line segments. This provides a straightforward representation of how values change [5] . Their versatility makes them invaluable for scenarios requiring a visual understanding of continuous data. In addition, line graphs are also useful for comparing multiple datasets over the same timeline. Using multiple line graphs allows us to compare more than one data set. They simplify complex information so the audience can quickly grasp the ups and downs of values. From tracking stock prices to analyzing experimental results, you can use line graphs to show how data changes over a continuous timeline. They show trends with simplicity and clarity.

Real-life Application of Line Graphs

To understand line graphs thoroughly, we will use a real case. Imagine you’re a financial analyst presenting a tech company’s monthly sales for a licensed product over the past year. Investors want insights into sales behavior by month, how market trends may have influenced sales performance and reception to the new pricing strategy. To present data via a line graph, you will complete these steps.

First, you need to gather the data. In this case, your data will be the sales numbers. For example:

  • January: $45,000
  • February: $55,000
  • March: $45,000
  • April: $60,000
  • May: $ 70,000
  • June: $65,000
  • July: $62,000
  • August: $68,000
  • September: $81,000
  • October: $76,000
  • November: $87,000
  • December: $91,000

After choosing the data, the next step is to select the orientation. Like bar charts, you can use vertical or horizontal line graphs. However, we want to keep this simple, so we will keep the timeline (x-axis) horizontal while the sales numbers (y-axis) vertical.

Step 3: Connecting Trends

After adding the data to your preferred software, you will plot a line graph. In the graph, each month’s sales are represented by data points connected by a line.

Line graph in data presentation

Step 4: Adding Clarity with Color

If there are multiple lines, you can also add colors to highlight each one, making it easier to follow.

Line graphs excel at visually presenting trends over time. These presentation aids identify patterns, like upward or downward trends. However, too many data points can clutter the graph, making it harder to interpret. Line graphs work best with continuous data but are not suitable for categories.

For more information, check our collection of line chart templates for PowerPoint and our article about how to make a presentation graph .

A data dashboard is a visual tool for analyzing information. Different graphs, charts, and tables are consolidated in a layout to showcase the information required to achieve one or more objectives. Dashboards help quickly see Key Performance Indicators (KPIs). You don’t make new visuals in the dashboard; instead, you use it to display visuals you’ve already made in worksheets [3] .

Keeping the number of visuals on a dashboard to three or four is recommended. Adding too many can make it hard to see the main points [4]. Dashboards can be used for business analytics to analyze sales, revenue, and marketing metrics at a time. They are also used in the manufacturing industry, as they allow users to grasp the entire production scenario at the moment while tracking the core KPIs for each line.

Real-Life Application of a Dashboard

Consider a project manager presenting a software development project’s progress to a tech company’s leadership team. He follows the following steps.

Step 1: Defining Key Metrics

To effectively communicate the project’s status, identify key metrics such as completion status, budget, and bug resolution rates. Then, choose measurable metrics aligned with project objectives.

Step 2: Choosing Visualization Widgets

After finalizing the data, presentation aids that align with each metric are selected. For this project, the project manager chooses a progress bar for the completion status and uses bar charts for budget allocation. Likewise, he implements line charts for bug resolution rates.

Data analysis presentation example

Step 3: Dashboard Layout

Key metrics are prominently placed in the dashboard for easy visibility, and the manager ensures that it appears clean and organized.

Dashboards provide a comprehensive view of key project metrics. Users can interact with data, customize views, and drill down for detailed analysis. However, creating an effective dashboard requires careful planning to avoid clutter. Besides, dashboards rely on the availability and accuracy of underlying data sources.

For more information, check our article on how to design a dashboard presentation , and discover our collection of dashboard PowerPoint templates .

Treemap charts represent hierarchical data structured in a series of nested rectangles [6] . As each branch of the ‘tree’ is given a rectangle, smaller tiles can be seen representing sub-branches, meaning elements on a lower hierarchical level than the parent rectangle. Each one of those rectangular nodes is built by representing an area proportional to the specified data dimension.

Treemaps are useful for visualizing large datasets in compact space. It is easy to identify patterns, such as which categories are dominant. Common applications of the treemap chart are seen in the IT industry, such as resource allocation, disk space management, website analytics, etc. Also, they can be used in multiple industries like healthcare data analysis, market share across different product categories, or even in finance to visualize portfolios.

Real-Life Application of a Treemap Chart

Let’s consider a financial scenario where a financial team wants to represent the budget allocation of a company. There is a hierarchy in the process, so it is helpful to use a treemap chart. In the chart, the top-level rectangle could represent the total budget, and it would be subdivided into smaller rectangles, each denoting a specific department. Further subdivisions within these smaller rectangles might represent individual projects or cost categories.

Step 1: Define Your Data Hierarchy

While presenting data on the budget allocation, start by outlining the hierarchical structure. The sequence will be like the overall budget at the top, followed by departments, projects within each department, and finally, individual cost categories for each project.

  • Top-level rectangle: Total Budget
  • Second-level rectangles: Departments (Engineering, Marketing, Sales)
  • Third-level rectangles: Projects within each department
  • Fourth-level rectangles: Cost categories for each project (Personnel, Marketing Expenses, Equipment)

Step 2: Choose a Suitable Tool

It’s time to select a data visualization tool supporting Treemaps. Popular choices include Tableau, Microsoft Power BI, PowerPoint, or even coding with libraries like D3.js. It is vital to ensure that the chosen tool provides customization options for colors, labels, and hierarchical structures.

Here, the team uses PowerPoint for this guide because of its user-friendly interface and robust Treemap capabilities.

Step 3: Make a Treemap Chart with PowerPoint

After opening the PowerPoint presentation, they chose “SmartArt” to form the chart. The SmartArt Graphic window has a “Hierarchy” category on the left.  Here, you will see multiple options. You can choose any layout that resembles a Treemap. The “Table Hierarchy” or “Organization Chart” options can be adapted. The team selects the Table Hierarchy as it looks close to a Treemap.

Step 5: Input Your Data

After that, a new window will open with a basic structure. They add the data one by one by clicking on the text boxes. They start with the top-level rectangle, representing the total budget.  

Treemap used for presenting data

Step 6: Customize the Treemap

By clicking on each shape, they customize its color, size, and label. At the same time, they can adjust the font size, style, and color of labels by using the options in the “Format” tab in PowerPoint. Using different colors for each level enhances the visual difference.

Treemaps excel at illustrating hierarchical structures. These charts make it easy to understand relationships and dependencies. They efficiently use space, compactly displaying a large amount of data, reducing the need for excessive scrolling or navigation. Additionally, using colors enhances the understanding of data by representing different variables or categories.

In some cases, treemaps might become complex, especially with deep hierarchies.  It becomes challenging for some users to interpret the chart. At the same time, displaying detailed information within each rectangle might be constrained by space. It potentially limits the amount of data that can be shown clearly. Without proper labeling and color coding, there’s a risk of misinterpretation.

A heatmap is a data visualization tool that uses color coding to represent values across a two-dimensional surface. In these, colors replace numbers to indicate the magnitude of each cell. This color-shaded matrix display is valuable for summarizing and understanding data sets with a glance [7] . The intensity of the color corresponds to the value it represents, making it easy to identify patterns, trends, and variations in the data.

As a tool, heatmaps help businesses analyze website interactions, revealing user behavior patterns and preferences to enhance overall user experience. In addition, companies use heatmaps to assess content engagement, identifying popular sections and areas of improvement for more effective communication. They excel at highlighting patterns and trends in large datasets, making it easy to identify areas of interest.

We can implement heatmaps to express multiple data types, such as numerical values, percentages, or even categorical data. Heatmaps help us easily spot areas with lots of activity, making them helpful in figuring out clusters [8] . When making these maps, it is important to pick colors carefully. The colors need to show the differences between groups or levels of something. And it is good to use colors that people with colorblindness can easily see.

Check our detailed guide on how to create a heatmap here. Also discover our collection of heatmap PowerPoint templates .

Pie charts are circular statistical graphics divided into slices to illustrate numerical proportions. Each slice represents a proportionate part of the whole, making it easy to visualize the contribution of each component to the total.

The size of the pie charts is influenced by the value of data points within each pie. The total of all data points in a pie determines its size. The pie with the highest data points appears as the largest, whereas the others are proportionally smaller. However, you can present all pies of the same size if proportional representation is not required [9] . Sometimes, pie charts are difficult to read, or additional information is required. A variation of this tool can be used instead, known as the donut chart , which has the same structure but a blank center, creating a ring shape. Presenters can add extra information, and the ring shape helps to declutter the graph.

Pie charts are used in business to show percentage distribution, compare relative sizes of categories, or present straightforward data sets where visualizing ratios is essential.

Real-Life Application of Pie Charts

Consider a scenario where you want to represent the distribution of the data. Each slice of the pie chart would represent a different category, and the size of each slice would indicate the percentage of the total portion allocated to that category.

Step 1: Define Your Data Structure

Imagine you are presenting the distribution of a project budget among different expense categories.

  • Column A: Expense Categories (Personnel, Equipment, Marketing, Miscellaneous)
  • Column B: Budget Amounts ($40,000, $30,000, $20,000, $10,000) Column B represents the values of your categories in Column A.

Step 2: Insert a Pie Chart

Using any of the accessible tools, you can create a pie chart. The most convenient tools for forming a pie chart in a presentation are presentation tools such as PowerPoint or Google Slides.  You will notice that the pie chart assigns each expense category a percentage of the total budget by dividing it by the total budget.

For instance:

  • Personnel: $40,000 / ($40,000 + $30,000 + $20,000 + $10,000) = 40%
  • Equipment: $30,000 / ($40,000 + $30,000 + $20,000 + $10,000) = 30%
  • Marketing: $20,000 / ($40,000 + $30,000 + $20,000 + $10,000) = 20%
  • Miscellaneous: $10,000 / ($40,000 + $30,000 + $20,000 + $10,000) = 10%

You can make a chart out of this or just pull out the pie chart from the data.

Pie chart template in data presentation

3D pie charts and 3D donut charts are quite popular among the audience. They stand out as visual elements in any presentation slide, so let’s take a look at how our pie chart example would look in 3D pie chart format.

3D pie chart in data presentation

Step 03: Results Interpretation

The pie chart visually illustrates the distribution of the project budget among different expense categories. Personnel constitutes the largest portion at 40%, followed by equipment at 30%, marketing at 20%, and miscellaneous at 10%. This breakdown provides a clear overview of where the project funds are allocated, which helps in informed decision-making and resource management. It is evident that personnel are a significant investment, emphasizing their importance in the overall project budget.

Pie charts provide a straightforward way to represent proportions and percentages. They are easy to understand, even for individuals with limited data analysis experience. These charts work well for small datasets with a limited number of categories.

However, a pie chart can become cluttered and less effective in situations with many categories. Accurate interpretation may be challenging, especially when dealing with slight differences in slice sizes. In addition, these charts are static and do not effectively convey trends over time.

For more information, check our collection of pie chart templates for PowerPoint .

Histograms present the distribution of numerical variables. Unlike a bar chart that records each unique response separately, histograms organize numeric responses into bins and show the frequency of reactions within each bin [10] . The x-axis of a histogram shows the range of values for a numeric variable. At the same time, the y-axis indicates the relative frequencies (percentage of the total counts) for that range of values.

Whenever you want to understand the distribution of your data, check which values are more common, or identify outliers, histograms are your go-to. Think of them as a spotlight on the story your data is telling. A histogram can provide a quick and insightful overview if you’re curious about exam scores, sales figures, or any numerical data distribution.

Real-Life Application of a Histogram

In the histogram data analysis presentation example, imagine an instructor analyzing a class’s grades to identify the most common score range. A histogram could effectively display the distribution. It will show whether most students scored in the average range or if there are significant outliers.

Step 1: Gather Data

He begins by gathering the data. The scores of each student in class are gathered to analyze exam scores.

After arranging the scores in ascending order, bin ranges are set.

Step 2: Define Bins

Bins are like categories that group similar values. Think of them as buckets that organize your data. The presenter decides how wide each bin should be based on the range of the values. For instance, the instructor sets the bin ranges based on score intervals: 60-69, 70-79, 80-89, and 90-100.

Step 3: Count Frequency

Now, he counts how many data points fall into each bin. This step is crucial because it tells you how often specific ranges of values occur. The result is the frequency distribution, showing the occurrences of each group.

Here, the instructor counts the number of students in each category.

  • 60-69: 1 student (Kate)
  • 70-79: 4 students (David, Emma, Grace, Jack)
  • 80-89: 7 students (Alice, Bob, Frank, Isabel, Liam, Mia, Noah)
  • 90-100: 3 students (Clara, Henry, Olivia)

Step 4: Create the Histogram

It’s time to turn the data into a visual representation. Draw a bar for each bin on a graph. The width of the bar should correspond to the range of the bin, and the height should correspond to the frequency.  To make your histogram understandable, label the X and Y axes.

In this case, the X-axis should represent the bins (e.g., test score ranges), and the Y-axis represents the frequency.

Histogram in Data Presentation

The histogram of the class grades reveals insightful patterns in the distribution. Most students, with seven students, fall within the 80-89 score range. The histogram provides a clear visualization of the class’s performance. It showcases a concentration of grades in the upper-middle range with few outliers at both ends. This analysis helps in understanding the overall academic standing of the class. It also identifies the areas for potential improvement or recognition.

Thus, histograms provide a clear visual representation of data distribution. They are easy to interpret, even for those without a statistical background. They apply to various types of data, including continuous and discrete variables. One weak point is that histograms do not capture detailed patterns in students’ data, with seven compared to other visualization methods.

A scatter plot is a graphical representation of the relationship between two variables. It consists of individual data points on a two-dimensional plane. This plane plots one variable on the x-axis and the other on the y-axis. Each point represents a unique observation. It visualizes patterns, trends, or correlations between the two variables.

Scatter plots are also effective in revealing the strength and direction of relationships. They identify outliers and assess the overall distribution of data points. The points’ dispersion and clustering reflect the relationship’s nature, whether it is positive, negative, or lacks a discernible pattern. In business, scatter plots assess relationships between variables such as marketing cost and sales revenue. They help present data correlations and decision-making.

Real-Life Application of Scatter Plot

A group of scientists is conducting a study on the relationship between daily hours of screen time and sleep quality. After reviewing the data, they managed to create this table to help them build a scatter plot graph:

In the provided example, the x-axis represents Daily Hours of Screen Time, and the y-axis represents the Sleep Quality Rating.

Scatter plot in data presentation

The scientists observe a negative correlation between the amount of screen time and the quality of sleep. This is consistent with their hypothesis that blue light, especially before bedtime, has a significant impact on sleep quality and metabolic processes.

There are a few things to remember when using a scatter plot. Even when a scatter diagram indicates a relationship, it doesn’t mean one variable affects the other. A third factor can influence both variables. The more the plot resembles a straight line, the stronger the relationship is perceived [11] . If it suggests no ties, the observed pattern might be due to random fluctuations in data. When the scatter diagram depicts no correlation, whether the data might be stratified is worth considering.

Choosing the appropriate data presentation type is crucial when making a presentation . Understanding the nature of your data and the message you intend to convey will guide this selection process. For instance, when showcasing quantitative relationships, scatter plots become instrumental in revealing correlations between variables. If the focus is on emphasizing parts of a whole, pie charts offer a concise display of proportions. Histograms, on the other hand, prove valuable for illustrating distributions and frequency patterns. 

Bar charts provide a clear visual comparison of different categories. Likewise, line charts excel in showcasing trends over time, while tables are ideal for detailed data examination. Starting a presentation on data presentation types involves evaluating the specific information you want to communicate and selecting the format that aligns with your message. This ensures clarity and resonance with your audience from the beginning of your presentation.

1. Fact Sheet Dashboard for Data Presentation

methods of data presentation are

Convey all the data you need to present in this one-pager format, an ideal solution tailored for users looking for presentation aids. Global maps, donut chats, column graphs, and text neatly arranged in a clean layout presented in light and dark themes.

Use This Template

2. 3D Column Chart Infographic PPT Template

methods of data presentation are

Represent column charts in a highly visual 3D format with this PPT template. A creative way to present data, this template is entirely editable, and we can craft either a one-page infographic or a series of slides explaining what we intend to disclose point by point.

3. Data Circles Infographic PowerPoint Template

methods of data presentation are

An alternative to the pie chart and donut chart diagrams, this template features a series of curved shapes with bubble callouts as ways of presenting data. Expand the information for each arch in the text placeholder areas.

4. Colorful Metrics Dashboard for Data Presentation

methods of data presentation are

This versatile dashboard template helps us in the presentation of the data by offering several graphs and methods to convert numbers into graphics. Implement it for e-commerce projects, financial projections, project development, and more.

5. Animated Data Presentation Tools for PowerPoint & Google Slides

Canvas Shape Tree Diagram Template

A slide deck filled with most of the tools mentioned in this article, from bar charts, column charts, treemap graphs, pie charts, histogram, etc. Animated effects make each slide look dynamic when sharing data with stakeholders.

6. Statistics Waffle Charts PPT Template for Data Presentations

methods of data presentation are

This PPT template helps us how to present data beyond the typical pie chart representation. It is widely used for demographics, so it’s a great fit for marketing teams, data science professionals, HR personnel, and more.

7. Data Presentation Dashboard Template for Google Slides

methods of data presentation are

A compendium of tools in dashboard format featuring line graphs, bar charts, column charts, and neatly arranged placeholder text areas. 

8. Weather Dashboard for Data Presentation

methods of data presentation are

Share weather data for agricultural presentation topics, environmental studies, or any kind of presentation that requires a highly visual layout for weather forecasting on a single day. Two color themes are available.

9. Social Media Marketing Dashboard Data Presentation Template

methods of data presentation are

Intended for marketing professionals, this dashboard template for data presentation is a tool for presenting data analytics from social media channels. Two slide layouts featuring line graphs and column charts.

10. Project Management Summary Dashboard Template

methods of data presentation are

A tool crafted for project managers to deliver highly visual reports on a project’s completion, the profits it delivered for the company, and expenses/time required to execute it. 4 different color layouts are available.

11. Profit & Loss Dashboard for PowerPoint and Google Slides

methods of data presentation are

A must-have for finance professionals. This typical profit & loss dashboard includes progress bars, donut charts, column charts, line graphs, and everything that’s required to deliver a comprehensive report about a company’s financial situation.

Overwhelming visuals

One of the mistakes related to using data-presenting methods is including too much data or using overly complex visualizations. They can confuse the audience and dilute the key message.

Inappropriate chart types

Choosing the wrong type of chart for the data at hand can lead to misinterpretation. For example, using a pie chart for data that doesn’t represent parts of a whole is not right.

Lack of context

Failing to provide context or sufficient labeling can make it challenging for the audience to understand the significance of the presented data.

Inconsistency in design

Using inconsistent design elements and color schemes across different visualizations can create confusion and visual disarray.

Failure to provide details

Simply presenting raw data without offering clear insights or takeaways can leave the audience without a meaningful conclusion.

Lack of focus

Not having a clear focus on the key message or main takeaway can result in a presentation that lacks a central theme.

Visual accessibility issues

Overlooking the visual accessibility of charts and graphs can exclude certain audience members who may have difficulty interpreting visual information.

In order to avoid these mistakes in data presentation, presenters can benefit from using presentation templates . These templates provide a structured framework. They ensure consistency, clarity, and an aesthetically pleasing design, enhancing data communication’s overall impact.

Understanding and choosing data presentation types are pivotal in effective communication. Each method serves a unique purpose, so selecting the appropriate one depends on the nature of the data and the message to be conveyed. The diverse array of presentation types offers versatility in visually representing information, from bar charts showing values to pie charts illustrating proportions. 

Using the proper method enhances clarity, engages the audience, and ensures that data sets are not just presented but comprehensively understood. By appreciating the strengths and limitations of different presentation types, communicators can tailor their approach to convey information accurately, developing a deeper connection between data and audience understanding.

[1] Government of Canada, S.C. (2021) 5 Data Visualization 5.2 Bar Chart , 5.2 Bar chart .  https://www150.statcan.gc.ca/n1/edu/power-pouvoir/ch9/bargraph-diagrammeabarres/5214818-eng.htm

[2] Kosslyn, S.M., 1989. Understanding charts and graphs. Applied cognitive psychology, 3(3), pp.185-225. https://apps.dtic.mil/sti/pdfs/ADA183409.pdf

[3] Creating a Dashboard . https://it.tufts.edu/book/export/html/1870

[4] https://www.goldenwestcollege.edu/research/data-and-more/data-dashboards/index.html

[5] https://www.mit.edu/course/21/21.guide/grf-line.htm

[6] Jadeja, M. and Shah, K., 2015, January. Tree-Map: A Visualization Tool for Large Data. In GSB@ SIGIR (pp. 9-13). https://ceur-ws.org/Vol-1393/gsb15proceedings.pdf#page=15

[7] Heat Maps and Quilt Plots. https://www.publichealth.columbia.edu/research/population-health-methods/heat-maps-and-quilt-plots

[8] EIU QGIS WORKSHOP. https://www.eiu.edu/qgisworkshop/heatmaps.php

[9] About Pie Charts.  https://www.mit.edu/~mbarker/formula1/f1help/11-ch-c8.htm

[10] Histograms. https://sites.utexas.edu/sos/guided/descriptive/numericaldd/descriptiven2/histogram/ [11] https://asq.org/quality-resources/scatter-diagram

methods of data presentation are

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methods of data presentation are

Data presentation: A comprehensive guide

Learn how to create data presentation effectively and communicate your insights in a way that is clear, concise, and engaging.

Raja Bothra

Building presentations

team preparing data presentation

Hey there, fellow data enthusiast!

Welcome to our comprehensive guide on data presentation.

Whether you're an experienced presenter or just starting, this guide will help you present your data like a pro.

We'll dive deep into what data presentation is, why it's crucial, and how to master it. So, let's embark on this data-driven journey together.

What is data presentation?

Data presentation is the art of transforming raw data into a visual format that's easy to understand and interpret. It's like turning numbers and statistics into a captivating story that your audience can quickly grasp. When done right, data presentation can be a game-changer, enabling you to convey complex information effectively.

Why are data presentations important?

Imagine drowning in a sea of numbers and figures. That's how your audience might feel without proper data presentation. Here's why it's essential:

  • Clarity : Data presentations make complex information clear and concise.
  • Engagement : Visuals, such as charts and graphs, grab your audience's attention.
  • Comprehension : Visual data is easier to understand than long, numerical reports.
  • Decision-making : Well-presented data aids informed decision-making.
  • Impact : It leaves a lasting impression on your audience.

Types of data presentation

Now, let's delve into the diverse array of data presentation methods, each with its own unique strengths and applications. We have three primary types of data presentation, and within these categories, numerous specific visualization techniques can be employed to effectively convey your data.

1. Textual presentation

Textual presentation harnesses the power of words and sentences to elucidate and contextualize your data. This method is commonly used to provide a narrative framework for the data, offering explanations, insights, and the broader implications of your findings. It serves as a foundation for a deeper understanding of the data's significance.

2. Tabular presentation

Tabular presentation employs tables to arrange and structure your data systematically. These tables are invaluable for comparing various data groups or illustrating how data evolves over time. They present information in a neat and organized format, facilitating straightforward comparisons and reference points.

3. Graphical presentation

Graphical presentation harnesses the visual impact of charts and graphs to breathe life into your data. Charts and graphs are powerful tools for spotlighting trends, patterns, and relationships hidden within the data. Let's explore some common graphical presentation methods:

  • Bar charts: They are ideal for comparing different categories of data. In this method, each category is represented by a distinct bar, and the height of the bar corresponds to the value it represents. Bar charts provide a clear and intuitive way to discern differences between categories.
  • Pie charts: It excel at illustrating the relative proportions of different data categories. Each category is depicted as a slice of the pie, with the size of each slice corresponding to the percentage of the total value it represents. Pie charts are particularly effective for showcasing the distribution of data.
  • Line graphs: They are the go-to choice when showcasing how data evolves over time. Each point on the line represents a specific value at a particular time period. This method enables viewers to track trends and fluctuations effortlessly, making it perfect for visualizing data with temporal dimensions.
  • Scatter plots: They are the tool of choice when exploring the relationship between two variables. In this method, each point on the plot represents a pair of values for the two variables in question. Scatter plots help identify correlations, outliers, and patterns within data pairs.

The selection of the most suitable data presentation method hinges on the specific dataset and the presentation's objectives. For instance, when comparing sales figures of different products, a bar chart shines in its simplicity and clarity. On the other hand, if your aim is to display how a product's sales have changed over time, a line graph provides the ideal visual narrative.

Additionally, it's crucial to factor in your audience's level of familiarity with data presentations. For a technical audience, more intricate visualization methods may be appropriate. However, when presenting to a general audience, opting for straightforward and easily understandable visuals is often the wisest choice.

In the world of data presentation, choosing the right method is akin to selecting the perfect brush for a masterpiece. Each tool has its place, and understanding when and how to use them is key to crafting compelling and insightful presentations. So, consider your data carefully, align your purpose, and paint a vivid picture that resonates with your audience.

What to include in data presentation

When creating your data presentation, remember these key components:

  • Data points : Clearly state the data points you're presenting.
  • Comparison : Highlight comparisons and trends in your data.
  • Graphical methods : Choose the right chart or graph for your data.
  • Infographics : Use visuals like infographics to make information more digestible.
  • Numerical values : Include numerical values to support your visuals.
  • Qualitative information : Explain the significance of the data.
  • Source citation : Always cite your data sources.

How to structure an effective data presentation

Creating a well-structured data presentation is not just important; it's the backbone of a successful presentation. Here's a step-by-step guide to help you craft a compelling and organized presentation that captivates your audience:

1. Know your audience

Understanding your audience is paramount. Consider their needs, interests, and existing knowledge about your topic. Tailor your presentation to their level of understanding, ensuring that it resonates with them on a personal level. Relevance is the key.

2. Have a clear message

Every effective data presentation should convey a clear and concise message. Determine what you want your audience to learn or take away from your presentation, and make sure your message is the guiding light throughout your presentation. Ensure that all your data points align with and support this central message.

3. Tell a compelling story

Human beings are naturally wired to remember stories. Incorporate storytelling techniques into your presentation to make your data more relatable and memorable. Your data can be the backbone of a captivating narrative, whether it's about a trend, a problem, or a solution. Take your audience on a journey through your data.

4. Leverage visuals

Visuals are a powerful tool in data presentation. They make complex information accessible and engaging. Utilize charts, graphs, and images to illustrate your points and enhance the visual appeal of your presentation. Visuals should not just be an accessory; they should be an integral part of your storytelling.

5. Be clear and concise

Avoid jargon or technical language that your audience may not comprehend. Use plain language and explain your data points clearly. Remember, clarity is king. Each piece of information should be easy for your audience to digest.

6. Practice your delivery

Practice makes perfect. Rehearse your presentation multiple times before the actual delivery. This will help you deliver it smoothly and confidently, reducing the chances of stumbling over your words or losing track of your message.

A basic structure for an effective data presentation

Armed with a comprehensive comprehension of how to construct a compelling data presentation, you can now utilize this fundamental template for guidance:

In the introduction, initiate your presentation by introducing both yourself and the topic at hand. Clearly articulate your main message or the fundamental concept you intend to communicate.

Moving on to the body of your presentation, organize your data in a coherent and easily understandable sequence. Employ visuals generously to elucidate your points and weave a narrative that enhances the overall story. Ensure that the arrangement of your data aligns with and reinforces your central message.

As you approach the conclusion, succinctly recapitulate your key points and emphasize your core message once more. Conclude by leaving your audience with a distinct and memorable takeaway, ensuring that your presentation has a lasting impact.

Additional tips for enhancing your data presentation

To take your data presentation to the next level, consider these additional tips:

  • Consistent design : Maintain a uniform design throughout your presentation. This not only enhances visual appeal but also aids in seamless comprehension.
  • High-quality visuals : Ensure that your visuals are of high quality, easy to read, and directly relevant to your topic.
  • Concise text : Avoid overwhelming your slides with excessive text. Focus on the most critical points, using visuals to support and elaborate.
  • Anticipate questions : Think ahead about the questions your audience might pose. Be prepared with well-thought-out answers to foster productive discussions.

By following these guidelines, you can structure an effective data presentation that not only informs but also engages and inspires your audience. Remember, a well-structured presentation is the bridge that connects your data to your audience's understanding and appreciation.

Do’s and don'ts on a data presentation

  • Use visuals : Incorporate charts and graphs to enhance understanding.
  • Keep it simple : Avoid clutter and complexity.
  • Highlight key points : Emphasize crucial data.
  • Engage the audience : Encourage questions and discussions.
  • Practice : Rehearse your presentation.

Don'ts:

  • Overload with data : Less is often more; don't overwhelm your audience.
  • Fit Unrelated data : Stay on topic; don't include irrelevant information.
  • Neglect the audience : Ensure your presentation suits your audience's level of expertise.
  • Read word-for-word : Avoid reading directly from slides.
  • Lose focus : Stick to your presentation's purpose.

Summarizing key takeaways

  • Definition : Data presentation is the art of visualizing complex data for better understanding.
  • Importance : Data presentations enhance clarity, engage the audience, aid decision-making, and leave a lasting impact.
  • Types : Textual, Tabular, and Graphical presentations offer various ways to present data.
  • Choosing methods : Select the right method based on data, audience, and purpose.
  • Components : Include data points, comparisons, visuals, infographics, numerical values, and source citations.
  • Structure : Know your audience, have a clear message, tell a compelling story, use visuals, be concise, and practice.
  • Do's and don'ts : Do use visuals, keep it simple, highlight key points, engage the audience, and practice. Don't overload with data, include unrelated information, neglect the audience's expertise, read word-for-word, or lose focus.

1. What is data presentation, and why is it important in 2023?

Data presentation is the process of visually representing data sets to convey information effectively to an audience. In an era where the amount of data generated is vast, visually presenting data using methods such as diagrams, graphs, and charts has become crucial. By simplifying complex data sets, presentation of the data may helps your audience quickly grasp much information without drowning in a sea of chart's, analytics, facts and figures.

2. What are some common methods of data presentation?

There are various methods of data presentation, including graphs and charts, histograms, and cumulative frequency polygons. Each method has its strengths and is often used depending on the type of data you're using and the message you want to convey. For instance, if you want to show data over time, try using a line graph. If you're presenting geographical data, consider to use a heat map.

3. How can I ensure that my data presentation is clear and readable?

To ensure that your data presentation is clear and readable, pay attention to the design and labeling of your charts. Don't forget to label the axes appropriately, as they are critical for understanding the values they represent. Don't fit all the information in one slide or in a single paragraph. Presentation software like Prezent and PowerPoint can help you simplify your vertical axis, charts and tables, making them much easier to understand.

4. What are some common mistakes presenters make when presenting data?

One common mistake is trying to fit too much data into a single chart, which can distort the information and confuse the audience. Another mistake is not considering the needs of the audience. Remember that your audience won't have the same level of familiarity with the data as you do, so it's essential to present the data effectively and respond to questions during a Q&A session.

5. How can I use data visualization to present important data effectively on platforms like LinkedIn?

When presenting data on platforms like LinkedIn, consider using eye-catching visuals like bar graphs or charts. Use concise captions and e.g., examples to highlight the single most important information in your data report. Visuals, such as graphs and tables, can help you stand out in the sea of textual content, making your data presentation more engaging and shareable among your LinkedIn connections.

Create your data presentation with prezent

Prezent can be a valuable tool for creating data presentations. Here's how Prezent can help you in this regard:

  • Time savings : Prezent saves up to 70% of presentation creation time, allowing you to focus on data analysis and insights.
  • On-brand consistency : Ensure 100% brand alignment with Prezent's brand-approved designs for professional-looking data presentations.
  • Effortless collaboration : Real-time sharing and collaboration features make it easy for teams to work together on data presentations.
  • Data storytelling : Choose from 50+ storylines to effectively communicate data insights and engage your audience.
  • Personalization : Create tailored data presentations that resonate with your audience's preferences, enhancing the impact of your data.

In summary, Prezent streamlines the process of creating data presentations by offering time-saving features, ensuring brand consistency, promoting collaboration, and providing tools for effective data storytelling. Whether you need to present data to clients, stakeholders, or within your organization, Prezent can significantly enhance your presentation-making process.

So, go ahead, present your data with confidence, and watch your audience be wowed by your expertise.

Thank you for joining us on this data-driven journey. Stay tuned for more insights, and remember, data presentation is your ticket to making numbers come alive!

Sign up for our free trial or book a demo !

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Present Your Data Like a Pro

  • Joel Schwartzberg

methods of data presentation are

Demystify the numbers. Your audience will thank you.

While a good presentation has data, data alone doesn’t guarantee a good presentation. It’s all about how that data is presented. The quickest way to confuse your audience is by sharing too many details at once. The only data points you should share are those that significantly support your point — and ideally, one point per chart. To avoid the debacle of sheepishly translating hard-to-see numbers and labels, rehearse your presentation with colleagues sitting as far away as the actual audience would. While you’ve been working with the same chart for weeks or months, your audience will be exposed to it for mere seconds. Give them the best chance of comprehending your data by using simple, clear, and complete language to identify X and Y axes, pie pieces, bars, and other diagrammatic elements. Try to avoid abbreviations that aren’t obvious, and don’t assume labeled components on one slide will be remembered on subsequent slides. Every valuable chart or pie graph has an “Aha!” zone — a number or range of data that reveals something crucial to your point. Make sure you visually highlight the “Aha!” zone, reinforcing the moment by explaining it to your audience.

With so many ways to spin and distort information these days, a presentation needs to do more than simply share great ideas — it needs to support those ideas with credible data. That’s true whether you’re an executive pitching new business clients, a vendor selling her services, or a CEO making a case for change.

methods of data presentation are

  • JS Joel Schwartzberg oversees executive communications for a major national nonprofit, is a professional presentation coach, and is the author of Get to the Point! Sharpen Your Message and Make Your Words Matter and The Language of Leadership: How to Engage and Inspire Your Team . You can find him on LinkedIn and X. TheJoelTruth

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Blog Data Visualization 10 Data Presentation Examples For Strategic Communication

10 Data Presentation Examples For Strategic Communication

Written by: Krystle Wong Sep 28, 2023

Data Presentation Examples

Knowing how to present data is like having a superpower. 

Data presentation today is no longer just about numbers on a screen; it’s storytelling with a purpose. It’s about captivating your audience, making complex stuff look simple and inspiring action. 

To help turn your data into stories that stick, influence decisions and make an impact, check out Venngage’s free chart maker or follow me on a tour into the world of data storytelling along with data presentation templates that work across different fields, from business boardrooms to the classroom and beyond. Keep scrolling to learn more! 

Click to jump ahead:

10 Essential data presentation examples + methods you should know

What should be included in a data presentation, what are some common mistakes to avoid when presenting data, faqs on data presentation examples, transform your message with impactful data storytelling.

Data presentation is a vital skill in today’s information-driven world. Whether you’re in business, academia, or simply want to convey information effectively, knowing the different ways of presenting data is crucial. For impactful data storytelling, consider these essential data presentation methods:

1. Bar graph

Ideal for comparing data across categories or showing trends over time.

Bar graphs, also known as bar charts are workhorses of data presentation. They’re like the Swiss Army knives of visualization methods because they can be used to compare data in different categories or display data changes over time. 

In a bar chart, categories are displayed on the x-axis and the corresponding values are represented by the height of the bars on the y-axis. 

methods of data presentation are

It’s a straightforward and effective way to showcase raw data, making it a staple in business reports, academic presentations and beyond.

Make sure your bar charts are concise with easy-to-read labels. Whether your bars go up or sideways, keep it simple by not overloading with too many categories.

methods of data presentation are

2. Line graph

Great for displaying trends and variations in data points over time or continuous variables.

Line charts or line graphs are your go-to when you want to visualize trends and variations in data sets over time.

One of the best quantitative data presentation examples, they work exceptionally well for showing continuous data, such as sales projections over the last couple of years or supply and demand fluctuations. 

methods of data presentation are

The x-axis represents time or a continuous variable and the y-axis represents the data values. By connecting the data points with lines, you can easily spot trends and fluctuations.

A tip when presenting data with line charts is to minimize the lines and not make it too crowded. Highlight the big changes, put on some labels and give it a catchy title.

methods of data presentation are

3. Pie chart

Useful for illustrating parts of a whole, such as percentages or proportions.

Pie charts are perfect for showing how a whole is divided into parts. They’re commonly used to represent percentages or proportions and are great for presenting survey results that involve demographic data. 

Each “slice” of the pie represents a portion of the whole and the size of each slice corresponds to its share of the total. 

methods of data presentation are

While pie charts are handy for illustrating simple distributions, they can become confusing when dealing with too many categories or when the differences in proportions are subtle.

Don’t get too carried away with slices — label those slices with percentages or values so people know what’s what and consider using a legend for more categories.

methods of data presentation are

4. Scatter plot

Effective for showing the relationship between two variables and identifying correlations.

Scatter plots are all about exploring relationships between two variables. They’re great for uncovering correlations, trends or patterns in data. 

In a scatter plot, every data point appears as a dot on the chart, with one variable marked on the horizontal x-axis and the other on the vertical y-axis.

methods of data presentation are

By examining the scatter of points, you can discern the nature of the relationship between the variables, whether it’s positive, negative or no correlation at all.

If you’re using scatter plots to reveal relationships between two variables, be sure to add trendlines or regression analysis when appropriate to clarify patterns. Label data points selectively or provide tooltips for detailed information.

methods of data presentation are

5. Histogram

Best for visualizing the distribution and frequency of a single variable.

Histograms are your choice when you want to understand the distribution and frequency of a single variable. 

They divide the data into “bins” or intervals and the height of each bar represents the frequency or count of data points falling into that interval. 

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Histograms are excellent for helping to identify trends in data distributions, such as peaks, gaps or skewness.

Here’s something to take note of — ensure that your histogram bins are appropriately sized to capture meaningful data patterns. Using clear axis labels and titles can also help explain the distribution of the data effectively.

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6. Stacked bar chart

Useful for showing how different components contribute to a whole over multiple categories.

Stacked bar charts are a handy choice when you want to illustrate how different components contribute to a whole across multiple categories. 

Each bar represents a category and the bars are divided into segments to show the contribution of various components within each category. 

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This method is ideal for highlighting both the individual and collective significance of each component, making it a valuable tool for comparative analysis.

Stacked bar charts are like data sandwiches—label each layer so people know what’s what. Keep the order logical and don’t forget the paintbrush for snazzy colors. Here’s a data analysis presentation example on writers’ productivity using stacked bar charts:

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7. Area chart

Similar to line charts but with the area below the lines filled, making them suitable for showing cumulative data.

Area charts are close cousins of line charts but come with a twist. 

Imagine plotting the sales of a product over several months. In an area chart, the space between the line and the x-axis is filled, providing a visual representation of the cumulative total. 

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This makes it easy to see how values stack up over time, making area charts a valuable tool for tracking trends in data.

For area charts, use them to visualize cumulative data and trends, but avoid overcrowding the chart. Add labels, especially at significant points and make sure the area under the lines is filled with a visually appealing color gradient.

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8. Tabular presentation

Presenting data in rows and columns, often used for precise data values and comparisons.

Tabular data presentation is all about clarity and precision. Think of it as presenting numerical data in a structured grid, with rows and columns clearly displaying individual data points. 

A table is invaluable for showcasing detailed data, facilitating comparisons and presenting numerical information that needs to be exact. They’re commonly used in reports, spreadsheets and academic papers.

methods of data presentation are

When presenting tabular data, organize it neatly with clear headers and appropriate column widths. Highlight important data points or patterns using shading or font formatting for better readability.

9. Textual data

Utilizing written or descriptive content to explain or complement data, such as annotations or explanatory text.

Textual data presentation may not involve charts or graphs, but it’s one of the most used qualitative data presentation examples. 

It involves using written content to provide context, explanations or annotations alongside data visuals. Think of it as the narrative that guides your audience through the data. 

Well-crafted textual data can make complex information more accessible and help your audience understand the significance of the numbers and visuals.

Textual data is your chance to tell a story. Break down complex information into bullet points or short paragraphs and use headings to guide the reader’s attention.

10. Pictogram

Using simple icons or images to represent data is especially useful for conveying information in a visually intuitive manner.

Pictograms are all about harnessing the power of images to convey data in an easy-to-understand way. 

Instead of using numbers or complex graphs, you use simple icons or images to represent data points. 

For instance, you could use a thumbs up emoji to illustrate customer satisfaction levels, where each face represents a different level of satisfaction. 

methods of data presentation are

Pictograms are great for conveying data visually, so choose symbols that are easy to interpret and relevant to the data. Use consistent scaling and a legend to explain the symbols’ meanings, ensuring clarity in your presentation.

methods of data presentation are

Looking for more data presentation ideas? Use the Venngage graph maker or browse through our gallery of chart templates to pick a template and get started! 

A comprehensive data presentation should include several key elements to effectively convey information and insights to your audience. Here’s a list of what should be included in a data presentation:

1. Title and objective

  • Begin with a clear and informative title that sets the context for your presentation.
  • State the primary objective or purpose of the presentation to provide a clear focus.

methods of data presentation are

2. Key data points

  • Present the most essential data points or findings that align with your objective.
  • Use charts, graphical presentations or visuals to illustrate these key points for better comprehension.

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3. Context and significance

  • Provide a brief overview of the context in which the data was collected and why it’s significant.
  • Explain how the data relates to the larger picture or the problem you’re addressing.

4. Key takeaways

  • Summarize the main insights or conclusions that can be drawn from the data.
  • Highlight the key takeaways that the audience should remember.

5. Visuals and charts

  • Use clear and appropriate visual aids to complement the data.
  • Ensure that visuals are easy to understand and support your narrative.

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6. Implications or actions

  • Discuss the practical implications of the data or any recommended actions.
  • If applicable, outline next steps or decisions that should be taken based on the data.

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7. Q&A and discussion

  • Allocate time for questions and open discussion to engage the audience.
  • Address queries and provide additional insights or context as needed.

Presenting data is a crucial skill in various professional fields, from business to academia and beyond. To ensure your data presentations hit the mark, here are some common mistakes that you should steer clear of:

Overloading with data

Presenting too much data at once can overwhelm your audience. Focus on the key points and relevant information to keep the presentation concise and focused. Here are some free data visualization tools you can use to convey data in an engaging and impactful way. 

Assuming everyone’s on the same page

It’s easy to assume that your audience understands as much about the topic as you do. But this can lead to either dumbing things down too much or diving into a bunch of jargon that leaves folks scratching their heads. Take a beat to figure out where your audience is coming from and tailor your presentation accordingly.

Misleading visuals

Using misleading visuals, such as distorted scales or inappropriate chart types can distort the data’s meaning. Pick the right data infographics and understandable charts to ensure that your visual representations accurately reflect the data.

Not providing context

Data without context is like a puzzle piece with no picture on it. Without proper context, data may be meaningless or misinterpreted. Explain the background, methodology and significance of the data.

Not citing sources properly

Neglecting to cite sources and provide citations for your data can erode its credibility. Always attribute data to its source and utilize reliable sources for your presentation.

Not telling a story

Avoid simply presenting numbers. If your presentation lacks a clear, engaging story that takes your audience on a journey from the beginning (setting the scene) through the middle (data analysis) to the end (the big insights and recommendations), you’re likely to lose their interest.

Infographics are great for storytelling because they mix cool visuals with short and sweet text to explain complicated stuff in a fun and easy way. Create one with Venngage’s free infographic maker to create a memorable story that your audience will remember.

Ignoring data quality

Presenting data without first checking its quality and accuracy can lead to misinformation. Validate and clean your data before presenting it.

Simplify your visuals

Fancy charts might look cool, but if they confuse people, what’s the point? Go for the simplest visual that gets your message across. Having a dilemma between presenting data with infographics v.s data design? This article on the difference between data design and infographics might help you out. 

Missing the emotional connection

Data isn’t just about numbers; it’s about people and real-life situations. Don’t forget to sprinkle in some human touch, whether it’s through relatable stories, examples or showing how the data impacts real lives.

Skipping the actionable insights

At the end of the day, your audience wants to know what they should do with all the data. If you don’t wrap up with clear, actionable insights or recommendations, you’re leaving them hanging. Always finish up with practical takeaways and the next steps.

Can you provide some data presentation examples for business reports?

Business reports often benefit from data presentation through bar charts showing sales trends over time, pie charts displaying market share,or tables presenting financial performance metrics like revenue and profit margins.

What are some creative data presentation examples for academic presentations?

Creative data presentation ideas for academic presentations include using statistical infographics to illustrate research findings and statistical data, incorporating storytelling techniques to engage the audience or utilizing heat maps to visualize data patterns.

What are the key considerations when choosing the right data presentation format?

When choosing a chart format , consider factors like data complexity, audience expertise and the message you want to convey. Options include charts (e.g., bar, line, pie), tables, heat maps, data visualization infographics and interactive dashboards.

Knowing the type of data visualization that best serves your data is just half the battle. Here are some best practices for data visualization to make sure that the final output is optimized. 

How can I choose the right data presentation method for my data?

To select the right data presentation method, start by defining your presentation’s purpose and audience. Then, match your data type (e.g., quantitative, qualitative) with suitable visualization techniques (e.g., histograms, word clouds) and choose an appropriate presentation format (e.g., slide deck, report, live demo).

For more presentation ideas , check out this guide on how to make a good presentation or use a presentation software to simplify the process.  

How can I make my data presentations more engaging and informative?

To enhance data presentations, use compelling narratives, relatable examples and fun data infographics that simplify complex data. Encourage audience interaction, offer actionable insights and incorporate storytelling elements to engage and inform effectively.

The opening of your presentation holds immense power in setting the stage for your audience. To design a presentation and convey your data in an engaging and informative, try out Venngage’s free presentation maker to pick the right presentation design for your audience and topic. 

What is the difference between data visualization and data presentation?

Data presentation typically involves conveying data reports and insights to an audience, often using visuals like charts and graphs. Data visualization , on the other hand, focuses on creating those visual representations of data to facilitate understanding and analysis. 

Now that you’ve learned a thing or two about how to use these methods of data presentation to tell a compelling data story , it’s time to take these strategies and make them your own. 

But here’s the deal: these aren’t just one-size-fits-all solutions. Remember that each example we’ve uncovered here is not a rigid template but a source of inspiration. It’s all about making your audience go, “Wow, I get it now!”

Think of your data presentations as your canvas – it’s where you paint your story, convey meaningful insights and make real change happen. 

So, go forth, present your data with confidence and purpose and watch as your strategic influence grows, one compelling presentation at a time.

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How to Present Data Effectively

How to Present Data Effectively | Quick Tips & Tutorial for your presentations

You’re sitting in front of your computer and ready to put together a presentation involving data.   The numbers stare at you from your screen, jumbled and raw.   How do you start?   Numbers on their own can be difficult to digest. Without any context, they’re just that—numbers.   But organize them well and they tell a story.   In this blog post, we’ll go into the importance of structuring data in a presentation and provide tips on how to do it well. These tips are practical and applicable for all sorts of presentations—from marketing plans and medical breakthroughs to project proposals and portfolios. 

What is data presentation?

3 essential tips on data presentation, use the right chart, keep it simple, use text wisely and sparingly.

In many ways, data presentation is like storytelling—only you do them with a series of graphs and charts.  One of the most common mistakes presenters make is being so submerged in the data that they fail to view it from an outsider’s point of view.   Always keep this in mind: What makes sense to you may not make sense to your audience. To portray figures and statistics in a way that’s comprehensible to your viewers, step back, put yourself in their shoes, and consider the following: 

  • How much do they know about the topic?
  • How much information will they need?
  • What data will impress them?

Providing a context helps your audience visualize and understand the numbers. To help you achieve that, here are three tips on how to represent data effectively.  

Whether you’re using Google Slides or PowerPoint, both come equipped with a range of design tools that help you help your viewers make sense of your qualitative data.  The key here is to know how to use them and how to use them well. In these tips, we’ll cover the basics of data presentation that are often overlooked but also go beyond basics for more professional advice. 

The downside of having too many tools at your disposal is that it makes selecting an uphill task.   Pie and bar charts are by far the most commonly used methods as they are versatile and easy to understand. 

methods of data presentation are

If you’re looking to kick things up a notch, think outside the box. When the numbers allow for it, opt for something different. For example, donut charts can sometimes be used to execute the same effect as pie charts. 

methods of data presentation are

But these conventional graphs and charts aren’t applicable to all types of data. For example, if you’re comparing numerous variables and factors, a bar chart would do no good. A table, on the other hand, offers a much cleaner look.

methods of data presentation are

Pro tip : If you want to go beyond basics, create your own shapes and use their sizes to reflect proportion, as seen in this next image.

methods of data presentation are

Their sizes don’t have to be an exact reflection of their proportions. What’s important here is that they’re discernible and are of the same shape so that your viewers can grasp its concept at first glance.  Note that this should only be used for comparisons with large enough contrasts. For instance, it’d be difficult to use this to compare two market sizes of 25 percent and 26 percent. 

When it comes to making qualitative data digestible, simplicity does the trick.  Limit the number of elements on the slide as much as possible and provide only the bare essentials. 

methods of data presentation are

See how simple this slide is? In one glance, your eye immediately goes to the percentages of the donut because there are no text boxes, illustrations, graphics, etc. to distract you.  Sometimes, more context is needed for your numbers to make sense. In the spirit of keeping your slides neat, you may be tempted to spread the data across two slides. But that makes it complicated, so putting it all on one slide is your only option.  In such cases, our mantra of “keep it simple” still applies. The trick lies in neat positioning and clever formatting.  

methods of data presentation are

In the above slides, we’ve used boxes to highlight supporting figures while giving enough attention to the main chart. This separates them visually and helps the audience focus better.  With the slide already pretty full, it’s crucial to use a plain background or risk overwhelming your viewers.  

Last but certainly not least, our final tip involves the use of text.  Just because you’re telling a story with numbers doesn’t mean text cannot be used. In fact, the contrary proves true: Text plays a vital role in data presentation and should be used strategically.  To highlight a particular statistic, do not hesitate to go all out and have that be the focal point of your slide for emphasis. Keep text to a minimum and as a supporting element. 

methods of data presentation are

Make sure your numbers are formatted clearly. Large figures should have thousands separated with commas. For example, 4,498,300,000 makes for a much easier read than “4498300000”. Any corresponding units should also be clear.  With data presentation, don’t forget that numbers are still your protagonist, so they must be highlighted with a larger or bolder font.  Where there are numbers and graphics, space is scarce so every single word must be chosen wisely.   The key here is to ensure your viewers understand what your data represents in one glance but to leave it sufficiently vague, like a teaser, so that they pay attention to your speech for more information.  → Slidesgo’s free presentation templates come included with specially designed and created charts and graphs that you can easily personalize according to your data. Give them a try now! 

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ChartExpo Survey

methods of data presentation are

Mastering Art of Data Presentation for Compelling Insights

You have a bunch of numbers, and you want to make them look good. You could just throw them all onto a spreadsheet and call it a day.

But where’s the fun in that?

Instead, you can use presentation of data methods to bring your data to life and make it more engaging. Data presentation is like a fancy dress party for numbers. Here, data puts on their finest outfits and strut their stuff.

Data Presentation

But, like at any party, there are different ways to make an entrance. Various methods of data presentation can make your information shine brighter than a disco ball.

You can dress them up in bar charts, line graphs, pie charts, etc. Each method has a unique style and purpose. All you have to do is choose the one that best suits your data. Then, tailor it to tell your story.

Let’s explore the different methods of data presentation and discover how to transform data into a captivating spectacle.

Table of Content:

What is data presentation.

  • Significance of Effective
  • Various Approaches

Tips for Effective Presentation of Data

  • Implementation

Data presentation refers to organizing and displaying data meaningfully and clearly. It involves transforming raw data into perfect data storytelling that can be easily interpreted and analyzed. Effective presentation enhances comprehension, facilitates decision-making, and supports communication.

Significance of Effective Data Presentation

Data presentation plays a crucial role in conveying information, insights, and trends effectively. Here are some reasons why it is invaluable:

  • Clarity and comprehension:  Data in its raw form can be complex and overwhelming. Data presentation simplifies the information and presents it in a manner that is easy to understand. It transforms numbers and statistics into visual and structured formats, facilitating a swift grasp of the key points.
  • Facilitates decision-making: Whether in business, research, or government, decision-makers rely on data to make informed choices. The presentation helps identify trends, patterns, and areas needing attention.
  • Effective communication: Data presentation bridges the gap between data experts and non-experts. Consequently, it makes it possible to effectively communicate findings, research, and insights to a broader audience.
  • Comparison and analysis: Data presentation methods like charts and graphs facilitate comparisons and data analysis. Visualizing data side by side or over time can reveal patterns and relationships not evident in raw data.
  • Audience engagement: Effective presentation techniques help engage the audience by presenting information in a visually stimulating way. This enhances understanding and increases the likelihood of the audience retaining the information.
  • Persuasion and influence: Data presentation is often used for persuasion and influence. It helps to highlight key data points, emphasize important information, and support the presenter’s arguments. Thus making it easier to convince and persuade others of a particular viewpoint or argument.
  • Problem-solving and analysis:  Presenting data in a structured and organized manner makes identifying patterns, correlations, and anomalies easier. Consequently, this leads to more accurate analysis and problem-solving.
  • Collaboration and teamwork: Effective presentation of data promotes collaboration and teamwork. Team members can easily share and discuss information, leading to better collaboration and effective decision-making.
  • Real-time analysis: With the advent of data visualization tools and dashboards, the presentation of data allows for real-time analysis. Consequently, you can monitor key metrics and respond to changing conditions swiftly.
  • Data transparency: Transparent ways of presenting data are essential for building trust, especially in government and research contexts. They provide a clear view of the data sources, methodology, and results, fostering accountability.

Various Approaches to Data Presentation

Tables are one of the most straightforward and widely used methods for the presentation of data. They consist of rows and columns, with each cell containing data. Tables are handy for presenting structured and detailed information in a clear and organized format. They excel at showing precise values and directly comparing categories or data points.

Charts and Graphs

Charts and graphs visually simplify complex data, enhancing comprehension. Charts employ bars, lines, or columns for data display. On the other hand, graphs use points, lines, and curves to illustrate variable relationships.

Charts and graphs come in various types:

  • Bar charts: Used to compare discrete categories or values, bar charts display data as rectangular bars. They are excellent for showing comparisons and ranking items.
  • Line graphs: Ideal for illustrating trends and changes over time, line graphs connect data points with lines. This makes them suitable for time-series data.
  • Pie charts: These circular charts depict parts of a whole, showing the proportions and percentages of a data set.
  • Scatter plots: Scatter plots display data points on a grid, illustrating relationships and correlations between variables.
  • Histograms: Histograms are used to represent data distributions and frequencies. They provide insights into the spread and skewness of data.

Infographics

Infographics merge text, graphics, and visuals to present data concisely and captivatingly. They excel at simplifying complex ideas and presenting statistics in an easily understandable, visually pleasing way. They find common use in marketing, journalism, and education, enhancing data accessibility for a wide audience.

Dashboards are dynamic, tailor-made interfaces that provide real-time data visualization and analytics. They streamline monitoring Key Performance Indicators (KPIs) and metric tracking and facilitate data-driven decision-making .

Heatmaps use color intensity to represent data values, showing the concentration/distribution of data across a specific area. They are valuable for visualizing data patterns, such as website user activity (click heatmaps). Or areas of high and low interest in an image.

Effective data presentation is essential for conveying information clearly and engagingly. Here are tips to help you achieve effective data presentation:

  • Understand your audience: Consider the knowledge level and expectations of your audience. Then, tailor your data presentation to match their needs. This ensures the information is accessible and relevant to your target audience.
  • Select the appropriate visualization method: Choose the right chart, graph, or data presentation method for your data and objectives. For instance, bar charts are excellent for comparisons, while line graphs show trends over time .
  • Simplify and focus: Avoid clutter and complexity to keep your presentation clean and straightforward. Moreover, highlight the most critical data points or insights and remove distracting elements.
  • Use consistent design: Maintain a consistent design throughout your presentation. Use the same color scheme, fonts, and labeling style to provide visual coherence. This consistency enhances readability.
  • Label clearly: Ensure that all elements of your presentation of data are clearly labeled. Include titles, axis labels, and data source references to prevent confusion.
  • Provide context: Help your audience understand the context of the data. Explain what the data represents, its importance, and any relevant background information.
  • Test for clarity: Run a test presentation to a small group to gauge how well the information is received. This allows you to identify any areas that may need clarification or adjustment.
  • Stay up to date: Stay current with the presentation of data best practices and tools. Technology and design trends evolve, so it’s important to keep learning to improve your skills.

Best Data Presentation Implementation

Excel, the old stalwart of spreadsheets, is excellent for crunching numbers and organizing data. But when it comes to data visualization , it doesn’t quite “excel.”

We have a solution – ChartExpo.

ChartExpo breathes life into your Google Forms survey data when analyzed in Excel.

It turns your survey data into captivating visual masterpieces, all in just a few clicks.

Benefits of Using ChartExpo

  • ChartExpo’s got it all – a visual feast for your data. With a wide array of visualizations, you can cherry-pick the perfect one to dazzle your audience.
  • No more data headaches – ChartExpo streamlines analysis and presentation, making data look more attractive.
  • Say goodbye to coding dilemmas; ChartExpo’s user-friendly interface helps you create jaw-dropping visualizations with zero coding skills.
  • Unleash your creativity with ChartExpo’s customization options. You can spice up your visuals with colors, fonts, and styles that reflect your flair.
  • And the best part? It won’t break the bank. You get a full-on data visualization extravaganza with a free 7-day trial and a $10 monthly plan.

How to Install ChartExpo in Excel?

  • Open your Excel application.
  • Open the worksheet and click the “ Insert ” menu.
  • You’ll see the “ My Apps ” option.
  • In the office Add-ins window, click “ Store ” and search for ChartExpo on my Apps Store.
  • Click the “ Add ” button to install ChartExpo in your Excel.

ChartExpo charts are available both in Google Sheets and Microsoft Excel. Please use the following CTA’s to install the tool of your choice and create beautiful visualizations in a few clicks in your favorite tool.

Assume the responses to your survey are as shown in the table below.

This table contains sample data. Expect many responses and questions in real life.

  • To get started with ChartExpo, install  ChartExpo in Excel .
  • Now Click on My Apps from the INSERT menu.

insert chartexpo in excel

  • Choose ChartExpo from My Apps , then click Insert.

open chartexpo in excel

  • Once it loads, choose the “ Likert Scale Chart ” from the charts list.

search likert scale chart in excel

  • Click the “ Create Chart From Selection ” button after selecting the data from the sheet, as shown.

Create Chart From Selection ce462

  • When you click the “ Create Chart From Selection ” button, you have to map responses with numbers manually. The Likert scale has this arrangement:
  • Extremely Dissatisfied = 1
  • Dissatisfied = 2
  • Neutral = 3
  • Satisfied = 4
  • Extremely Satisfied = 5
  • Once all is set, click the “ Create Chart ” button.

Map Likert Scale Chart ce462

  • ChartExpo will generate the visualization below for you.

Data Presentation Design Template

  • If you want to have the chart’s title, click Edit Chart , as shown in the above image.
  • Click the pencil icon next to the Chart Header to change the title.
  • It will open the properties dialog. Under the Text section, you can add a heading in Line 1 and enable Show .
  • Give the appropriate title of your chart and click the Apply button.

Apply Tittle on Chart ce462

  • Let’s say you want to add text responses instead of numbers against every emoji.
  • Click the pencil icon next to the respective emoji. Expand the “ Label ” properties and write the required text. Then click the “ Apply All ” button.
  • Click the “ Save Changes ” button to persist the changes.

Apply Label on Chat ce462

  • Your final chart will appear below.

Final Data Presentation

  • 45% of customers expressed satisfaction with the venue selection, 40% were dissatisfied, and 15% remained neutral.
  • Regarding the coordination of the wedding day events, 50% were satisfied, while 40% expressed dissatisfaction.
  • Regarding the quality of services provided by the wedding organizer, 50% were satisfied, and 35% were dissatisfied.
  • 48% of customers expressed satisfaction with the wedding organizer, with 18% extremely satisfied.
  • 38% expressed dissatisfaction, with 13% extremely dissatisfied.
  • 13% remained neutral.

What are the types of data presentation methods?

Data presentation methods include;

  • Tables for structured data.
  • Charts and graphs for visual representation.
  • Infographics for concise visuals.
  • Dashboards for interactive data.
  • Heatmaps for data concentration

What is the difference between data analysis and data presentation?

Data analysis involves examining and interpreting data to extract insights and patterns. Data presentation focuses on visualizing those findings to make information understandable and engaging.

Understanding the different methods of data presentation is essential for effective communication in our data-driven world. Tables, charts, infographics, dashboards, and other techniques enable us to transform complex data into clear, engaging visual stories.

Each method has unique strengths, making it suitable for specific data types and audience preferences. For instance, tables enhance simplicity, charts and graphs promote clarity, and infographics improve visual appeal. Either way, each method enhances comprehension and enables informed decision-making.

Moreover, interactivity facilitated by dashboards and heatmaps empowers you to explore data independently. This fosters a culture of data-driven exploration and analysis.

Ultimately, data presentation goes beyond mere aesthetics; its core purpose is to infuse data with meaning. When we tell stories with data, we can inspire change, improve understanding, and unlock the power of information.

Choose the right method, practice effective design, and know your audience. These are the keys to presenting data that informs, engages, and makes a lasting impact.

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methods of data presentation are

It is the simplest form of data Presentation often used in schools or universities to provide a clearer picture to students, who are better able to capture the concepts effectively through a pictorial Presentation of simple data.

2. Column chart

methods of data presentation are

It is a simplified version of the pictorial Presentation which involves the management of a larger amount of data being shared during the presentations and providing suitable clarity to the insights of the data.

3. Pie Charts

pie-chart

Pie charts provide a very descriptive & a 2D depiction of the data pertaining to comparisons or resemblance of data in two separate fields.

4. Bar charts

Bar-Charts

A bar chart that shows the accumulation of data with cuboid bars with different dimensions & lengths which are directly proportionate to the values they represent. The bars can be placed either vertically or horizontally depending on the data being represented.

5. Histograms

methods of data presentation are

It is a perfect Presentation of the spread of numerical data. The main differentiation that separates data graphs and histograms are the gaps in the data graphs.

6. Box plots

box-plot

Box plot or Box-plot is a way of representing groups of numerical data through quartiles. Data Presentation is easier with this style of graph dealing with the extraction of data to the minutes of difference.

methods of data presentation are

Map Data graphs help you with data Presentation over an area to display the areas of concern. Map graphs are useful to make an exact depiction of data over a vast case scenario.

All these visual presentations share a common goal of creating meaningful insights and a platform to understand and manage the data in relation to the growth and expansion of one’s in-depth understanding of data & details to plan or execute future decisions or actions.

Importance of Data Presentation

Data Presentation could be both can be a deal maker or deal breaker based on the delivery of the content in the context of visual depiction.

Data Presentation tools are powerful communication tools that can simplify the data by making it easily understandable & readable at the same time while attracting & keeping the interest of its readers and effectively showcase large amounts of complex data in a simplified manner.

If the user can create an insightful presentation of the data in hand with the same sets of facts and figures, then the results promise to be impressive.

There have been situations where the user has had a great amount of data and vision for expansion but the presentation drowned his/her vision.

To impress the higher management and top brass of a firm, effective presentation of data is needed.

Data Presentation helps the clients or the audience to not spend time grasping the concept and the future alternatives of the business and to convince them to invest in the company & turn it profitable both for the investors & the company.

Although data presentation has a lot to offer, the following are some of the major reason behind the essence of an effective presentation:-

  • Many consumers or higher authorities are interested in the interpretation of data, not the raw data itself. Therefore, after the analysis of the data, users should represent the data with a visual aspect for better understanding and knowledge.
  • The user should not overwhelm the audience with a number of slides of the presentation and inject an ample amount of texts as pictures that will speak for themselves.
  • Data presentation often happens in a nutshell with each department showcasing their achievements towards company growth through a graph or a histogram.
  • Providing a brief description would help the user to attain attention in a small amount of time while informing the audience about the context of the presentation
  • The inclusion of pictures, charts, graphs and tables in the presentation help for better understanding the potential outcomes.
  • An effective presentation would allow the organization to determine the difference with the fellow organization and acknowledge its flaws. Comparison of data would assist them in decision making.

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1.3: Presentation of Data

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Learning Objectives

  • To learn two ways that data will be presented in the text.

In this book we will use two formats for presenting data sets. The first is a data list, which is an explicit listing of all the individual measurements, either as a display with space between the individual measurements, or in set notation with individual measurements separated by commas.

Example \(\PageIndex{1}\)

The data obtained by measuring the age of \(21\) randomly selected students enrolled in freshman courses at a university could be presented as the data list:

\[\begin{array}{cccccccccc}18 & 18 & 19 & 19 & 19 & 18 & 22 & 20 & 18 & 18 & 17 \\ 19 & 18 & 24 & 18 & 20 & 18 & 21 & 20 & 17 & 19 &\end{array} \nonumber \]

or in set notation as:

\[ \{18,18,19,19,19,18,22,20,18,18,17,19,18,24,18,20,18,21,20,17,19\} \nonumber \]

A data set can also be presented by means of a data frequency table, a table in which each distinct value \(x\) is listed in the first row and its frequency \(f\), which is the number of times the value \(x\) appears in the data set, is listed below it in the second row.

Example \(\PageIndex{2}\)

The data set of the previous example is represented by the data frequency table

\[\begin{array}{c|cccccc}x & 17 & 18 & 19 & 20 & 21 & 22 & 24 \\ \hline f & 2 & 8 & 5 & 3 & 1 & 1 & 1\end{array} \nonumber \]

The data frequency table is especially convenient when data sets are large and the number of distinct values is not too large.

Key Takeaway

  • Data sets can be presented either by listing all the elements or by giving a table of values and frequencies.

methods of data presentation are

  • Google Slides Presentation Design
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Why presentation of data is important?

  • Design Tips
  • Guide & How to's

Why presentation of data is important?

With the digitalization era, data went from scarce, expensive, and challenging to find to abundant, cheap, and complicated to process. That’s when the need for statistics presentation of data has emerged. Reliable and reasonable amounts of information were so vast that they were challenging to seize, store, understand, and analyze with traditional methods.

What Is Data Presentation?

Terabytes of unused data in a data center is a burden. If correctly processed, it can become digital gold. Similarly, your company or startup has valuable data, and data analysis presentation is the most convenient and attractive way to demonstrate your growth projections, monthly expenditures, revenue achievements, etc.

To present data effectively, you need to:

  • Know how to illustrate the different methods of presentation of data;
  • Determine the different types of graphs and diagrams and their uses;
  • Represent a set of data using various data presentation methods.

If you feel or exactly realize that you lack knowledge and expertise in these points, we advise contacting a presentation design agency to have all numbers formatted and drawn in attractive pie charts, bar graphs, and all kinds of diagrams.

How to Present Data in a PowerPoint Presentation?

Methods of data presentation.

There are 3 main methods of data representation in PowerPoint:

We are here for a data PowerPoint presentation, so let’s focus on the last method. Graphical representation of data enables your audience to study the cause and effect relationship between two variables. It helps in easy and quick understanding of data for listeners of different preparation and knowledge levels.

Kinds of Graphs/Diagrams

Numbers have an important story to tell, and using a correct graph or diagram will nail this story:

  • A bar graph is used to show relationships/comparisons between groups;
  • A pie or circle graph shows the percentage effectively;
  • A line graph is most useful in displaying data that changes continuously over time;
  • Pictograph uses small figures of objects called isotopes in making comparisons (each picture represents a definite quantity).

This variety keeps your hands open to choice and improvisation. However, if this factor, on the contrary, restrains you from presentation design, you should address presentation services that make both PowerPoint and Google slides design .

why presentation of data is important?

Data Presentation Tips

Presenting data on slides should follow specific principles to remain informative while visually attractive:

  • Only show the data you’re talking about;
  • Don’t just copy and paste a big Excel table;
  • Never present a single number;
  • Highlight 1 focal point per slide;
  • Charts and graphs are pictures and should tell stories;
  • Use colors;
  • Use consistent formatting;
  • Use appropriate chart types;
  • Use stickers to protect yourself.

Nobody likes too many boring numbers, and data by itself is useless. Use these tips to make it more friendly to the audience, and your audience will appreciate your effort.

Let’s Sum up

Presenting data seems like a complex task, but mastering it will show your diligence and expertise. Remember, your job as a presenter is to help your audience cut through all the noise. You must help them interpret the data in a meaningful way. Use today’s information when it comes to visualizing data by incorporating charts and graphs into a presentation everybody understands and story persuading anyone.

#ezw_tco-2 .ez-toc-widget-container ul.ez-toc-list li.active::before { background-color: #ededed; } Table of contents

  • Presenting techniques
  • 50 tips on how to improve PowerPoint presentations in 2022-2023 [Updated]
  • Keynote VS PowerPoint
  • Types of presentations
  • Present financial information visually in PowerPoint to drive results

How to make a presentation interactive

How to make a presentation interactive

Line, bar and pie charts

Line, bar and pie charts

How to start and end a presentation: top tips and tricks from professionals (+ special focus)

How to start and end a presentation: top tips and tricks from professionals (+ special focus)

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  • Korean J Anesthesiol
  • v.70(3); 2017 Jun

Statistical data presentation

1 Department of Anesthesiology and Pain Medicine, Dongguk University Ilsan Hospital, Goyang, Korea.

Sangseok Lee

2 Department of Anesthesiology and Pain Medicine, Sanggye Paik Hospital, Inje University College of Medicine, Seoul, Korea.

Data are usually collected in a raw format and thus the inherent information is difficult to understand. Therefore, raw data need to be summarized, processed, and analyzed. However, no matter how well manipulated, the information derived from the raw data should be presented in an effective format, otherwise, it would be a great loss for both authors and readers. In this article, the techniques of data and information presentation in textual, tabular, and graphical forms are introduced. Text is the principal method for explaining findings, outlining trends, and providing contextual information. A table is best suited for representing individual information and represents both quantitative and qualitative information. A graph is a very effective visual tool as it displays data at a glance, facilitates comparison, and can reveal trends and relationships within the data such as changes over time, frequency distribution, and correlation or relative share of a whole. Text, tables, and graphs for data and information presentation are very powerful communication tools. They can make an article easy to understand, attract and sustain the interest of readers, and efficiently present large amounts of complex information. Moreover, as journal editors and reviewers glance at these presentations before reading the whole article, their importance cannot be ignored.

Introduction

Data are a set of facts, and provide a partial picture of reality. Whether data are being collected with a certain purpose or collected data are being utilized, questions regarding what information the data are conveying, how the data can be used, and what must be done to include more useful information must constantly be kept in mind.

Since most data are available to researchers in a raw format, they must be summarized, organized, and analyzed to usefully derive information from them. Furthermore, each data set needs to be presented in a certain way depending on what it is used for. Planning how the data will be presented is essential before appropriately processing raw data.

First, a question for which an answer is desired must be clearly defined. The more detailed the question is, the more detailed and clearer the results are. A broad question results in vague answers and results that are hard to interpret. In other words, a well-defined question is crucial for the data to be well-understood later. Once a detailed question is ready, the raw data must be prepared before processing. These days, data are often summarized, organized, and analyzed with statistical packages or graphics software. Data must be prepared in such a way they are properly recognized by the program being used. The present study does not discuss this data preparation process, which involves creating a data frame, creating/changing rows and columns, changing the level of a factor, categorical variable, coding, dummy variables, variable transformation, data transformation, missing value, outlier treatment, and noise removal.

We describe the roles and appropriate use of text, tables, and graphs (graphs, plots, or charts), all of which are commonly used in reports, articles, posters, and presentations. Furthermore, we discuss the issues that must be addressed when presenting various kinds of information, and effective methods of presenting data, which are the end products of research, and of emphasizing specific information.

Data Presentation

Data can be presented in one of the three ways:

–as text;

–in tabular form; or

–in graphical form.

Methods of presentation must be determined according to the data format, the method of analysis to be used, and the information to be emphasized. Inappropriately presented data fail to clearly convey information to readers and reviewers. Even when the same information is being conveyed, different methods of presentation must be employed depending on what specific information is going to be emphasized. A method of presentation must be chosen after carefully weighing the advantages and disadvantages of different methods of presentation. For easy comparison of different methods of presentation, let us look at a table ( Table 1 ) and a line graph ( Fig. 1 ) that present the same information [ 1 ]. If one wishes to compare or introduce two values at a certain time point, it is appropriate to use text or the written language. However, a table is the most appropriate when all information requires equal attention, and it allows readers to selectively look at information of their own interest. Graphs allow readers to understand the overall trend in data, and intuitively understand the comparison results between two groups. One thing to always bear in mind regardless of what method is used, however, is the simplicity of presentation.

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Object name is kjae-70-267-g001.jpg

Values are expressed as mean ± SD. Group C: normal saline, Group D: dexmedetomidine. SBP: systolic blood pressure, DBP: diastolic blood pressure, MBP: mean blood pressure, HR: heart rate. * P < 0.05 indicates a significant increase in each group, compared with the baseline values. † P < 0.05 indicates a significant decrease noted in Group D, compared with the baseline values. ‡ P < 0.05 indicates a significant difference between the groups.

Text presentation

Text is the main method of conveying information as it is used to explain results and trends, and provide contextual information. Data are fundamentally presented in paragraphs or sentences. Text can be used to provide interpretation or emphasize certain data. If quantitative information to be conveyed consists of one or two numbers, it is more appropriate to use written language than tables or graphs. For instance, information about the incidence rates of delirium following anesthesia in 2016–2017 can be presented with the use of a few numbers: “The incidence rate of delirium following anesthesia was 11% in 2016 and 15% in 2017; no significant difference of incidence rates was found between the two years.” If this information were to be presented in a graph or a table, it would occupy an unnecessarily large space on the page, without enhancing the readers' understanding of the data. If more data are to be presented, or other information such as that regarding data trends are to be conveyed, a table or a graph would be more appropriate. By nature, data take longer to read when presented as texts and when the main text includes a long list of information, readers and reviewers may have difficulties in understanding the information.

Table presentation

Tables, which convey information that has been converted into words or numbers in rows and columns, have been used for nearly 2,000 years. Anyone with a sufficient level of literacy can easily understand the information presented in a table. Tables are the most appropriate for presenting individual information, and can present both quantitative and qualitative information. Examples of qualitative information are the level of sedation [ 2 ], statistical methods/functions [ 3 , 4 ], and intubation conditions [ 5 ].

The strength of tables is that they can accurately present information that cannot be presented with a graph. A number such as “132.145852” can be accurately expressed in a table. Another strength is that information with different units can be presented together. For instance, blood pressure, heart rate, number of drugs administered, and anesthesia time can be presented together in one table. Finally, tables are useful for summarizing and comparing quantitative information of different variables. However, the interpretation of information takes longer in tables than in graphs, and tables are not appropriate for studying data trends. Furthermore, since all data are of equal importance in a table, it is not easy to identify and selectively choose the information required.

For a general guideline for creating tables, refer to the journal submission requirements 1) .

Heat maps for better visualization of information than tables

Heat maps help to further visualize the information presented in a table by applying colors to the background of cells. By adjusting the colors or color saturation, information is conveyed in a more visible manner, and readers can quickly identify the information of interest ( Table 2 ). Software such as Excel (in Microsoft Office, Microsoft, WA, USA) have features that enable easy creation of heat maps through the options available on the “conditional formatting” menu.

All numbers were created by the author. SBP: systolic blood pressure, DBP: diastolic blood pressure, MBP: mean blood pressure, HR: heart rate.

Graph presentation

Whereas tables can be used for presenting all the information, graphs simplify complex information by using images and emphasizing data patterns or trends, and are useful for summarizing, explaining, or exploring quantitative data. While graphs are effective for presenting large amounts of data, they can be used in place of tables to present small sets of data. A graph format that best presents information must be chosen so that readers and reviewers can easily understand the information. In the following, we describe frequently used graph formats and the types of data that are appropriately presented with each format with examples.

Scatter plot

Scatter plots present data on the x - and y -axes and are used to investigate an association between two variables. A point represents each individual or object, and an association between two variables can be studied by analyzing patterns across multiple points. A regression line is added to a graph to determine whether the association between two variables can be explained or not. Fig. 2 illustrates correlations between pain scoring systems that are currently used (PSQ, Pain Sensitivity Questionnaire; PASS, Pain Anxiety Symptoms Scale; PCS, Pain Catastrophizing Scale) and Geop-Pain Questionnaire (GPQ) with the correlation coefficient, R, and regression line indicated on the scatter plot [ 6 ]. If multiple points exist at an identical location as in this example ( Fig. 2 ), the correlation level may not be clear. In this case, a correlation coefficient or regression line can be added to further elucidate the correlation.

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Bar graph and histogram

A bar graph is used to indicate and compare values in a discrete category or group, and the frequency or other measurement parameters (i.e. mean). Depending on the number of categories, and the size or complexity of each category, bars may be created vertically or horizontally. The height (or length) of a bar represents the amount of information in a category. Bar graphs are flexible, and can be used in a grouped or subdivided bar format in cases of two or more data sets in each category. Fig. 3 is a representative example of a vertical bar graph, with the x -axis representing the length of recovery room stay and drug-treated group, and the y -axis representing the visual analog scale (VAS) score. The mean and standard deviation of the VAS scores are expressed as whiskers on the bars ( Fig. 3 ) [ 7 ].

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By comparing the endpoints of bars, one can identify the largest and the smallest categories, and understand gradual differences between each category. It is advised to start the x - and y -axes from 0. Illustration of comparison results in the x - and y -axes that do not start from 0 can deceive readers' eyes and lead to overrepresentation of the results.

One form of vertical bar graph is the stacked vertical bar graph. A stack vertical bar graph is used to compare the sum of each category, and analyze parts of a category. While stacked vertical bar graphs are excellent from the aspect of visualization, they do not have a reference line, making comparison of parts of various categories challenging ( Fig. 4 ) [ 8 ].

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A pie chart, which is used to represent nominal data (in other words, data classified in different categories), visually represents a distribution of categories. It is generally the most appropriate format for representing information grouped into a small number of categories. It is also used for data that have no other way of being represented aside from a table (i.e. frequency table). Fig. 5 illustrates the distribution of regular waste from operation rooms by their weight [ 8 ]. A pie chart is also commonly used to illustrate the number of votes each candidate won in an election.

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Line plot with whiskers

A line plot is useful for representing time-series data such as monthly precipitation and yearly unemployment rates; in other words, it is used to study variables that are observed over time. Line graphs are especially useful for studying patterns and trends across data that include climatic influence, large changes or turning points, and are also appropriate for representing not only time-series data, but also data measured over the progression of a continuous variable such as distance. As can be seen in Fig. 1 , mean and standard deviation of systolic blood pressure are indicated for each time point, which enables readers to easily understand changes of systolic pressure over time [ 1 ]. If data are collected at a regular interval, values in between the measurements can be estimated. In a line graph, the x-axis represents the continuous variable, while the y-axis represents the scale and measurement values. It is also useful to represent multiple data sets on a single line graph to compare and analyze patterns across different data sets.

Box and whisker chart

A box and whisker chart does not make any assumptions about the underlying statistical distribution, and represents variations in samples of a population; therefore, it is appropriate for representing nonparametric data. AA box and whisker chart consists of boxes that represent interquartile range (one to three), the median and the mean of the data, and whiskers presented as lines outside of the boxes. Whiskers can be used to present the largest and smallest values in a set of data or only a part of the data (i.e. 95% of all the data). Data that are excluded from the data set are presented as individual points and are called outliers. The spacing at both ends of the box indicates dispersion in the data. The relative location of the median demonstrated within the box indicates skewness ( Fig. 6 ). The box and whisker chart provided as an example represents calculated volumes of an anesthetic, desflurane, consumed over the course of the observation period ( Fig. 7 ) [ 9 ].

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Three-dimensional effects

Most of the recently introduced statistical packages and graphics software have the three-dimensional (3D) effect feature. The 3D effects can add depth and perspective to a graph. However, since they may make reading and interpreting data more difficult, they must only be used after careful consideration. The application of 3D effects on a pie chart makes distinguishing the size of each slice difficult. Even if slices are of similar sizes, slices farther from the front of the pie chart may appear smaller than the slices closer to the front ( Fig. 8 ).

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Drawing a graph: example

Finally, we explain how to create a graph by using a line graph as an example ( Fig. 9 ). In Fig. 9 , the mean values of arterial pressure were randomly produced and assumed to have been measured on an hourly basis. In many graphs, the x- and y-axes meet at the zero point ( Fig. 9A ). In this case, information regarding the mean and standard deviation of mean arterial pressure measurements corresponding to t = 0 cannot be conveyed as the values overlap with the y-axis. The data can be clearly exposed by separating the zero point ( Fig. 9B ). In Fig. 9B , the mean and standard deviation of different groups overlap and cannot be clearly distinguished from each other. Separating the data sets and presenting standard deviations in a single direction prevents overlapping and, therefore, reduces the visual inconvenience. Doing so also reduces the excessive number of ticks on the y-axis, increasing the legibility of the graph ( Fig. 9C ). In the last graph, different shapes were used for the lines connecting different time points to further allow the data to be distinguished, and the y-axis was shortened to get rid of the unnecessary empty space present in the previous graphs ( Fig. 9D ). A graph can be made easier to interpret by assigning each group to a different color, changing the shape of a point, or including graphs of different formats [ 10 ]. The use of random settings for the scale in a graph may lead to inappropriate presentation or presentation of data that can deceive readers' eyes ( Fig. 10 ).

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Owing to the lack of space, we could not discuss all types of graphs, but have focused on describing graphs that are frequently used in scholarly articles. We have summarized the commonly used types of graphs according to the method of data analysis in Table 3 . For general guidelines on graph designs, please refer to the journal submission requirements 2) .

Conclusions

Text, tables, and graphs are effective communication media that present and convey data and information. They aid readers in understanding the content of research, sustain their interest, and effectively present large quantities of complex information. As journal editors and reviewers will scan through these presentations before reading the entire text, their importance cannot be disregarded. For this reason, authors must pay as close attention to selecting appropriate methods of data presentation as when they were collecting data of good quality and analyzing them. In addition, having a well-established understanding of different methods of data presentation and their appropriate use will enable one to develop the ability to recognize and interpret inappropriately presented data or data presented in such a way that it deceives readers' eyes [ 11 ].

<Appendix>

Output for presentation.

Discovery and communication are the two objectives of data visualization. In the discovery phase, various types of graphs must be tried to understand the rough and overall information the data are conveying. The communication phase is focused on presenting the discovered information in a summarized form. During this phase, it is necessary to polish images including graphs, pictures, and videos, and consider the fact that the images may look different when printed than how appear on a computer screen. In this appendix, we discuss important concepts that one must be familiar with to print graphs appropriately.

The KJA asks that pictures and images meet the following requirement before submission 3)

“Figures and photographs should be submitted as ‘TIFF’ files. Submit files of figures and photographs separately from the text of the paper. Width of figure should be 84 mm (one column). Contrast of photos or graphs should be at least 600 dpi. Contrast of line drawings should be at least 1,200 dpi. The Powerpoint file (ppt, pptx) is also acceptable.”

Unfortunately, without sufficient knowledge of computer graphics, it is not easy to understand the submission requirement above. Therefore, it is necessary to develop an understanding of image resolution, image format (bitmap and vector images), and the corresponding file specifications.

Resolution is often mentioned to describe the quality of images containing graphs or CT/MRI scans, and video files. The higher the resolution, the clearer and closer to reality the image is, while the opposite is true for low resolutions. The most representative unit used to describe a resolution is “dpi” (dots per inch): this literally translates to the number of dots required to constitute 1 inch. The greater the number of dots, the higher the resolution. The KJA submission requirements recommend 600 dpi for images, and 1,200 dpi 4) for graphs. In other words, resolutions in which 600 or 1,200 dots constitute one inch are required for submission.

There are requirements for the horizontal length of an image in addition to the resolution requirements. While there are no requirements for the vertical length of an image, it must not exceed the vertical length of a page. The width of a column on one side of a printed page is 84 mm, or 3.3 inches (84/25.4 mm ≒ 3.3 inches). Therefore, a graph must have a resolution in which 1,200 dots constitute 1 inch, and have a width of 3.3 inches.

Bitmap and Vector

Methods of image construction are important. Bitmap images can be considered as images drawn on section paper. Enlarging the image will enlarge the picture along with the grid, resulting in a lower resolution; in other words, aliasing occurs. On the other hand, reducing the size of the image will reduce the size of the picture, while increasing the resolution. In other words, resolution and the size of an image are inversely proportionate to one another in bitmap images, and it is a drawback of bitmap images that resolution must be considered when adjusting the size of an image. To enlarge an image while maintaining the same resolution, the size and resolution of the image must be determined before saving the image. An image that has already been created cannot avoid changes to its resolution according to changes in size. Enlarging an image while maintaining the same resolution will increase the number of horizontal and vertical dots, ultimately increasing the number of pixels 5) of the image, and the file size. In other words, the file size of a bitmap image is affected by the size and resolution of the image (file extensions include JPG [JPEG] 6) , PNG 7) , GIF 8) , and TIF [TIFF] 9) . To avoid this complexity, the width of an image can be set to 4 inches and its resolution to 900 dpi to satisfy the submission requirements of most journals [ 12 ].

Vector images overcome the shortcomings of bitmap images. Vector images are created based on mathematical operations of line segments and areas between different points, and are not affected by aliasing or pixelation. Furthermore, they result in a smaller file size that is not affected by the size of the image. They are commonly used for drawings and illustrations (file extensions include EPS 10) , CGM 11) , and SVG 12) ).

Finally, the PDF 13) is a file format developed by Adobe Systems (Adobe Systems, CA, USA) for electronic documents, and can contain general documents, text, drawings, images, and fonts. They can also contain bitmap and vector images. While vector images are used by researchers when working in Powerpoint, they are saved as 960 × 720 dots when saved in TIFF format in Powerpoint. This results in a resolution that is inappropriate for printing on a paper medium. To save high-resolution bitmap images, the image must be saved as a PDF file instead of a TIFF, and the saved PDF file must be imported into an imaging processing program such as Photoshop™(Adobe Systems, CA, USA) to be saved in TIFF format [ 12 ].

1) Instructions to authors in KJA; section 5-(9) Table; https://ekja.org/index.php?body=instruction

2) Instructions to Authors in KJA; section 6-1)-(10) Figures and illustrations in Manuscript preparation; https://ekja.org/index.php?body=instruction

3) Instructions to Authors in KJA; section 6-1)-(10) Figures and illustrations in Manuscript preparation; https://ekja.org/index.php?body=instruction

4) Resolution; in KJA, it is represented by “contrast.”

5) Pixel is a minimum unit of an image and contains information of a dot and color. It is derived by multiplying the number of vertical and horizontal dots regardless of image size. For example, Full High Definition (FHD) monitor has 1920 × 1080 dots ≒ 2.07 million pixel.

6) Joint Photographic Experts Group.

7) Portable Network Graphics.

8) Graphics Interchange Format

9) Tagged Image File Format; TIFF

10) Encapsulated PostScript.

11) Computer Graphics Metafile.

12) Scalable Vector Graphics.

13) Portable Document Format.

Data Presentation

Josée Dupuis, PhD, Professor of Biostatistics, Boston University School of Public Health

Wayne LaMorte, MD, PhD, MPH, Professor of Epidemiology, Boston University School of Public Health

Introduction

While graphical summaries of data can certainly be powerful ways of communicating results clearly and unambiguously in a way that facilitates our ability to think about the information, poorly designed graphical displays can be ambiguous, confusing, and downright misleading. The keys to excellence in graphical design and communication are much like the keys to good writing. Adhere to fundamental principles of style and communicate as logically, accurately, and clearly as possible. Excellence in writing is generally achieved by avoiding unnecessary words and paragraphs; it is efficient. In a similar fashion, excellence in graphical presentation is generally achieved by efficient designs that avoid unnecessary ink.

Excellence in graphical presentation depends on:

  • Choosing the best medium for presenting the information
  • Designing the components of the graph in a way that communicates the information as clearly and accurately as possible.

Table or Graph?

  • Tables are generally best if you want to be able to look up specific information or if the values must be reported precisely.
  • Graphics are best for illustrating trends and making comparisons

The side by side illustrations below show the same information, first in table form and then in graphical form. While the information in the table is precise, the real goal is to compare a series of clinical outcomes in subjects taking either a drug or a placebo. The graphical presentation on the right makes it possible to quickly see that for each of the outcomes evaluated, the drug produced relief in a great proportion of subjects. Moreover, the viewer gets a clear sense of the magnitude of improvement, and the error bars provided a sense of the uncertainty in the data.

Principles for Table Display

  • Sort table rows in a meaningful way
  • Avoid alphabetical listing!
  • Use rates, proportions or ratios in addition (or instead of) totals
  • Show more than two time points if available
  • Multiple time points may be better presented in a Figure
  • Similar data should go down columns
  • Highlight important comparisons
  • Show the source of the data

Consider the data in the table below from http://www.cancer.gov/cancertopics/types/commoncancers

Our ability to quickly understand the relative frequency of these cancers is hampered by presenting them in alphabetical order. It is much easier for the reader to grasp the relative frequency by listing them from most frequent to least frequent as in the next table.

However, the same information might be presented more effectively with a dot plot, as shown below.

methods of data presentation are

Data from http://www.cancer.gov/cancertopics/types/commoncancers

Principles of Graphical Excellence from E.R. Tufte

Pattern perception.

Pattern perception is done by

  • Detection: recognition of geometry encoding physical values
  • Assembly: grouping of detected symbol elements; discerning overall patterns in data
  • Estimation: assessment of relative magnitudes of two physical values

Geographic Variation in Cancer

As an example, Tufte offers a series of maps that summarize the age-adjusted mortality rates for various types of cancer in the 3,056 counties in the United States. The maps showing the geographic variation in stomach cancer are shown below.

These maps summarize an enormous amount of information and present it efficiently, coherently, and effectively.in a way that invites the viewer to make comparisons and to think about the substance of the findings. Consider, for example, that the region to the west of the Great Lakes was settled largely by immigrants from Germany and Scand anavia, where traditional methods of preserving food included pickling and curing of fish by smoking. Could these methods be associated with an increased risk of stomach cancer?

John Snow's Spot Map of Cholera Cases

Consider also the spot map that John Snow presented after the cholera outbreak in the Broad Street section of London in September 1854. Snow ascertained the place of residence or work of the victims and represented them on a map of the area using a small black disk to represent each victim and stacking them when more than one occurred at a particular location. Snow reasoned that cholera was probably caused by something that was ingested, because of the intense diarrhea and vomiting of the victims, and he noted that the vast majority of cholera deaths occurred in people who lived or worked in the immediate vicinity of the broad street pump (shown with a red dot that we added for clarity). He further ascertained that most of the victims drank water from the Broad Street pump, and it was this evidence that persuaded the authorities to remove the handle from the pump in order to prevent more deaths.

Map of the Broad Street area of London showing stacks of black disks to represent the number of cholera cases that occurred at various locations. The cases seem to be clustered around the Broad Street water pump.

Humans can readily perceive differences like this when presented effectively as in the two previous examples. However, humans are not good at estimating differences without directly seeing them (especially for steep curves), and we are particularly bad at perceiving relative angles (the principal perception task used in a pie chart).

The use of pie charts is generally discouraged. Consider the pie chart on the left below. It is difficult to accurately assess the relative size of the components in the pie chart, because the human eye has difficulty judging angles. The dot plot on the right shows the same data, but it is much easier to quickly assess the relative size of the components and how they changed from Fiscal Year 2000 to Fiscal Year 2007.

Consider the information in the two pie charts below (showing the same information).The 3-dimensional pie chart on the left distorts the relative proportions. In contrast the 2-dimensional pie chart on the right makes it much easier to compare the relative size of the varies components..

More Principles of Graphical Excellence

Exclude unneeded dimensions.

These 3-dimensional techniques distort the data and actually interfere with our ability to make accurate comparisons. The distortion caused by 3-dimensional elements can be particularly severe when the graphic is slanted at an angle or when the viewer tends to compare ends up unwittingly comparing the areas of the ink rather than the heights of the bars.

It is much easier to make comparisons with a chart like the one below.

methods of data presentation are

Source: Huang, C, Guo C, Nichols C, Chen S, Martorell R. Elevated levels of protein in urine in adulthood after exposure to

the Chinese famine of 1959–61 during gestation and the early postnatal period. Int. J. Epidemiol. (2014) 43 (6): 1806-1814 .

Omit "Chart Junk"

Consider these two examples.

Here is a simple enumeration of the number of pets in a neighborhood. There is absolutely no reason to connect these counts with lines. This is, in fact, confusing and inappropriate and nothing more than "chart junk."

methods of data presentation are

Source: http://www.go-education.com/free-graph-maker.html

Moiré Vibration

Moiré effects are sometimes used in modern art to produce the appearance of vibration and movement. However, when these effects are applied to statistical presentations, they are distracting and add clutter because the visual noise interferes with the interpretation of the data.

Tufte presents the example shown below from Instituto de Expansao Commercial, Brasil, Graphicos Estatisticas (Rio de Janeiro, 1929, p. 15).

 While the intention is to present quantitative information about the textile industry, the moiré effects do not add anything, and they are distracting, if not visually annoying.

Present Data to Facilitate Comparisons

Here is an attempt to compare catches of cod fish and crab across regions and to relate the variation to changes in water temperature. The problem here is that the Y-axes are vastly different, making it hard to sort out what's really going on. Even the Y-axes for temperature are vastly different.

methods of data presentation are

http://seananderson.ca/courses/11-multipanel/multipanel.pdf1

The ability to make comparisons is greatly facilitated by using the same scales for axes, as illustrated below.

methods of data presentation are

Data source: Dawber TR, Meadors GF, Moore FE Jr. Epidemiological approaches to heart disease:

the Framingham Study. Am J Public Health Nations Health. 1951;41(3):279-81. PMID: 14819398

It is also important to avoid distorting the X-axis. Note in the example below that the space between 0.05 to 0.1 is the same as space between 0.1 and 0.2.

methods of data presentation are

Source: Park JH, Gail MH, Weinberg CR, et al. Distribution of allele frequencies and effect sizes and

their interrelationships for common genetic susceptibility variants. Proc Natl Acad Sci U S A. 2011; 108:18026-31.

Consider the range of the Y-axis. In the examples below there is no relevant information below $40,000, so it is not necessary to begin the Y-axis at 0. The graph on the right makes more sense.

Also, consider using a log scale. this can be particularly useful when presenting ratios as in the example below.

methods of data presentation are

Source: Broman KW, Murray JC, Sheffield VC, White RL, Weber JL (1998) Comprehensive human genetic maps:

Individual and sex-specific variation in recombination. American Journal of Human Genetics 63:861-869, Figure 1

We noted earlier that pie charts make it difficult to see differences within a single pie chart, but this is particularly difficult when data is presented with multiple pie charts, as in the example below.

methods of data presentation are

Source: Bell ML, et al. (2007) Spatial and temporal variation in PM2.5 chemical composition in the United States

for health effects studies. Environmental Health Perspectives 115:989-995, Figure 3

When multiple comparisons are being made, it is essential to use colors and symbols in a consistent way, as in this example.

methods of data presentation are

Source: Manning AK, LaValley M, Liu CT, et al.  Meta-Analysis of Gene-Environment Interaction:

Joint Estimation of SNP and SNP x Environment Regression Coefficients.  Genet Epidemiol 2011, 35(1):11-8.

Avoid putting too many lines on the same chart. In the example below, the only thing that is readily apparent is that 1980 was a very hot summer.

methods of data presentation are

Data from National Weather Service Weather Forecast Office at

http://www.srh.noaa.gov/tsa/?n=climo_tulyeartemp

Make Efficient Use of Space

Reduce the ratio of ink to information.

This isn't efficient, because this graphic is totally uninformative.

methods of data presentation are

Source: Mykland P, Tierney L, Yu B (1995) Regeneration in Markov chain samplers.  Journal of the American Statistical Association 90:233-241, Figure 1

Bar graphs add ink without conveying any additional information, and they are distracting. The graph below on the left inappropriately uses bars which clutter the graph without adding anything. The graph on the right displays the same data, by does so more clearly and with less clutter.

Multiple Types of Information on the Same Figure

Choosing the best graph type, bar charts, error bars and dot plots.

As noted previously, bar charts can be problematic. Here is another one presenting means and error bars, but the error bars are misleading because they only extend in one direction. A better alternative would have been to to use full error bars with a scatter plot, as illustrated previously (right).

Consider the four graphs below presenting the incidence of cancer by type. The upper left graph unnecessary uses bars, which take up a lot of ink. This layout also ends up making the fonts for the types of cancer too small. Small font is also a problem for the dot plot at the upper right, and this one also has unnecessary grid lines across the entire width.

The graph at the lower left has more readable labels and uses a simple dot plot, but the rank order is difficult to figure out.

The graph at the lower right is clearly the best, since the labels are readable, the magnitude of incidence is shown clearly by the dot plots, and the cancers are sorted by frequency.

Single Continuous Numeric Variable

In this situation a cumulative distribution function conveys the most information and requires no grouping of the variable. A box plot will show selected quantiles effectively, and box plots are especially useful when stratifying by multiple categories of another variable.

Histograms are also possible. Consider the examples below.

Two Variables

 The two graphs below summarize BMI (Body Mass Index) measurements in four categories, i.e., younger and older men and women. The graph on the left shows the means and 95% confidence interval for the mean in each of the four groups. This is easy to interpret, but the viewer cannot see that the data is actually quite skewed. The graph on the right shows the same information presented as a box plot. With this presentation method one gets a better understanding of the skewed distribution and how the groups compare.

The next example is a scatter plot with a superimposed smoothed line of prediction. The shaded region embracing the blue line is a representation of the 95% confidence limits for the estimated prediction. This was created using "ggplot" in the R programming language.

methods of data presentation are

Source: Frank E. Harrell Jr. on graphics:  http://biostat.mc.vanderbilt.edu/twiki/pub/Main/StatGraphCourse/graphscourse.pdf (page 121)

Multivariate Data

The example below shows the use of multiple panels.

methods of data presentation are

Source: Cleveland S. The Elements of Graphing Data. Hobart Press, Summit, NJ, 1994.

Displaying Uncertainty

  • Error bars showing confidence limits
  • Confidence bands drawn using two lines
  • Shaded confidence bands
  • Bayesian credible intervals
  • Bayesian posterior densities

Confidence Limits

Shaded Confidence Bands

methods of data presentation are

Source: Frank E. Harrell Jr. on graphics:  http://biostat.mc.vanderbilt.edu/twiki/pub/Main/StatGraphCourse/graphscourse.pdf

methods of data presentation are

Source: Tweedie RL and Mengersen KL. (1992) Br. J. Cancer 66: 700-705

Forest Plot

This is a Forest plot summarizing 26 studies of cigarette smoke exposure on risk of lung cancer. The sizes of the black boxes indicating the estimated odds ratio are proportional to the sample size in each study.

methods of data presentation are

Data from Tweedie RL and Mengersen KL. (1992) Br. J. Cancer 66: 700-705

Summary Recommendations

  • In general, avoid bar plots
  • Avoid chart junk and the use of too much ink relative to the information you are displaying. Keep it simple and clear.
  • Avoid pie charts, because humans have difficulty perceiving relative angles.
  • Pay attention to scale, and make scales consistent.
  • Explore several ways to display the data!

12 Tips on How to Display Data Badly

Adapted from Wainer H.  How to Display Data Badly.  The American Statistician 1984; 38: 137-147. 

  • Show as few data as possible
  • Hide what data you do show; minimize the data-ink ratio
  • Ignore the visual metaphor altogether
  • Only order matters
  • Graph data out of context
  • Change scales in mid-axis
  • Emphasize the trivial;  ignore the important
  • Jiggle the baseline
  • Alphabetize everything.
  • Make your labels illegible, incomplete, incorrect, and ambiguous.
  • More is murkier: use a lot of decimal places and make your graphs three dimensional whenever possible.
  • If it has been done well in the past, think of another way to do it

Additional Resources

  • Stephen Few: Designing Effective Tables and Graphs. http://www.perceptualedge.com/images/Effective_Chart_Design.pdf
  • Gary Klaas: Presenting Data: Tabular and graphic display of social indicators. Illinois State University, 2002. http://lilt.ilstu.edu/gmklass/pos138/datadisplay/sections/goodcharts.htm (Note: The web site will be discontinued to be replaced by the Just Plain Data Analysis site).

Presentation of Data

Class Registration Banner

Statistics deals with the collection, presentation and analysis of the data, as well as drawing meaningful conclusions from the given data. Generally, the data can be classified into two different types, namely primary data and secondary data. If the information is collected by the investigator with a definite objective in their mind, then the data obtained is called the primary data. If the information is gathered from a source, which already had the information stored, then the data obtained is called secondary data. Once the data is collected, the presentation of data plays a major role in concluding the result. Here, we will discuss how to present the data with many solved examples.

What is Meant by Presentation of Data?

As soon as the data collection is over, the investigator needs to find a way of presenting the data in a meaningful, efficient and easily understood way to identify the main features of the data at a glance using a suitable presentation method. Generally, the data in the statistics can be presented in three different forms, such as textual method, tabular method and graphical method.

Presentation of Data Examples

Now, let us discuss how to present the data in a meaningful way with the help of examples.

Consider the marks given below, which are obtained by 10 students in Mathematics:

36, 55, 73, 95, 42, 60, 78, 25, 62, 75.

Find the range for the given data.

Given Data: 36, 55, 73, 95, 42, 60, 78, 25, 62, 75.

The data given is called the raw data.

First, arrange the data in the ascending order : 25, 36, 42, 55, 60, 62, 73, 75, 78, 95.

Therefore, the lowest mark is 25 and the highest mark is 95.

We know that the range of the data is the difference between the highest and the lowest value in the dataset.

Therefore, Range = 95-25 = 70.

Note: Presentation of data in ascending or descending order can be time-consuming if we have a larger number of observations in an experiment.

Now, let us discuss how to present the data if we have a comparatively more number of observations in an experiment.

Consider the marks obtained by 30 students in Mathematics subject (out of 100 marks)

10, 20, 36, 92, 95, 40, 50, 56, 60, 70, 92, 88, 80, 70, 72, 70, 36, 40, 36, 40, 92, 40, 50, 50, 56, 60, 70, 60, 60, 88.

In this example, the number of observations is larger compared to example 1. So, the presentation of data in ascending or descending order is a bit time-consuming. Hence, we can go for the method called ungrouped frequency distribution table or simply frequency distribution table . In this method, we can arrange the data in tabular form in terms of frequency.

For example, 3 students scored 50 marks. Hence, the frequency of 50 marks is 3. Now, let us construct the frequency distribution table for the given data.

Therefore, the presentation of data is given as below:

The following example shows the presentation of data for the larger number of observations in an experiment.

Consider the marks obtained by 100 students in a Mathematics subject (out of 100 marks)

95, 67, 28, 32, 65, 65, 69, 33, 98, 96,76, 42, 32, 38, 42, 40, 40, 69, 95, 92, 75, 83, 76, 83, 85, 62, 37, 65, 63, 42, 89, 65, 73, 81, 49, 52, 64, 76, 83, 92, 93, 68, 52, 79, 81, 83, 59, 82, 75, 82, 86, 90, 44, 62, 31, 36, 38, 42, 39, 83, 87, 56, 58, 23, 35, 76, 83, 85, 30, 68, 69, 83, 86, 43, 45, 39, 83, 75, 66, 83, 92, 75, 89, 66, 91, 27, 88, 89, 93, 42, 53, 69, 90, 55, 66, 49, 52, 83, 34, 36.

Now, we have 100 observations to present the data. In this case, we have more data when compared to example 1 and example 2. So, these data can be arranged in the tabular form called the grouped frequency table. Hence, we group the given data like 20-29, 30-39, 40-49, ….,90-99 (As our data is from 23 to 98). The grouping of data is called the “class interval” or “classes”, and the size of the class is called “class-size” or “class-width”.

In this case, the class size is 10. In each class, we have a lower-class limit and an upper-class limit. For example, if the class interval is 30-39, the lower-class limit is 30, and the upper-class limit is 39. Therefore, the least number in the class interval is called the lower-class limit and the greatest limit in the class interval is called upper-class limit.

Hence, the presentation of data in the grouped frequency table is given below:

Hence, the presentation of data in this form simplifies the data and it helps to enable the observer to understand the main feature of data at a glance.

Practice Problems

  • The heights of 50 students (in cms) are given below. Present the data using the grouped frequency table by taking the class intervals as 160 -165, 165 -170, and so on.  Data: 161, 150, 154, 165, 168, 161, 154, 162, 150, 151, 162, 164, 171, 165, 158, 154, 156, 172, 160, 170, 153, 159, 161, 170, 162, 165, 166, 168, 165, 164, 154, 152, 153, 156, 158, 162, 160, 161, 173, 166, 161, 159, 162, 167, 168, 159, 158, 153, 154, 159.
  • Three coins are tossed simultaneously and each time the number of heads occurring is noted and it is given below. Present the data using the frequency distribution table. Data: 0, 1, 2, 2, 1, 2, 3, 1, 3, 0, 1, 3, 1, 1, 2, 2, 0, 1, 2, 1, 3, 0, 0, 1, 1, 2, 3, 2, 2, 0.

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What Is Data Visualization?

methods of data presentation are

Data visualization efforts must include the insights received from data, trends and patterns found within the data, as well as a way to discern complex data in a simplified manner. Data visualization comes in two basic forms: static visualization and interactive visualization.

2 Types of Data Visualization

  • Static visualization refers to a method of displaying data that tells focuses on only a single data relationship.
  • Interactive visualization allow users to select specific data points in order to present findings and create customized visual stories to compare against each other.

Why Is Data Visualization Important?

Data visualization is important for communicating complex business insights and analysis results to all stakeholders in a simplified manner.

Data visualization is a method of understanding and displaying complex data and powerful insights. Strong data visualization allows for better communication with stakeholders throughout an organization, which is crucial to growing a business and capitalizing on new opportunities. The amount of raw enterprise data multiplies yearly and continually presents new information that, when analyzed, can help uncover trends regarding customer behavior, market evolution, overall consumer habits and more.

Data visualization , when preceded by the use of data mining and data modeling techniques, allows analysts to discover vital insights within large data sets. Data visualization helps analysts easily communicate those insights for immediate action.

Related Reading From Built In Experts 7 Ways to Tell Powerful Stories With Your Data Visualization

What Are the 2 Types of Data Visualization?

The two basic types of data visualization are static visualization and interactive visualization.

Static Visualization

Static visualization refers to a method of displaying data that tells a specific story and focuses on only a single data relationship. A common example of static visualization is an engaging single-page layout like an infographic.

Interactive Visualization

Interactive visualizations , for the most part, only exist within software or web applications. This model allows users to select specific data points in order to present findings and create customized visual stories to compare against each other, thereby creating the opportunity for stakeholders to choose from a selection of insights to determine the best path forward, rather than deciding based on a single insight.

Both static and interactive visualization methods present opportunities to display data clearly and accurately. Data analysts should use their best judgment based on the target customer, data story and ROI when deciding on which visualization method to use.

What Are Data Visualization Best Practices?

Some best practices for data visualization include speaking to a specific audience, choosing a proper visualization and providing context.

It is crucial to follow best practices when presenting data visualizations:

  • Know Your Audience: Data should always be used to tell a story and uncover trends. It’s vital to know who will be most interested in the information and tailor your visualizations so they can digest the data.
  • Choose the Correct Visual: Data visualizations should always present the data in a way that makes it easy to understand. For example, a chart may be the best method of displaying data with a high degree of variability, while graphs may be better for displaying changes in data over time.
  • Provide Context: Data without context isn't very helpful, so the data visualizations you choose to put the information in perspective is important. A good visualization will not only show the data is relevant and easily provable, but will also tell a cohesive story.  
  • Keep It Simple:  Simple visualizations and dashboards go a long way in data visualization because they allow stakeholders to easily reference data and make informed decisions without becoming confused by the data’s purpose.
  • Engage the User: Lastly, engagement is important when presenting complicated data to stakeholders. To prevent users from becoming overwhelmed or intimidated, the overall design and user experience should be graspable without being intimidating.

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  • Technology Feature
  • Published: 24 May 2024

Seeing data as t-SNE and UMAP do

  • Vivien Marx 1  

Nature Methods ( 2024 ) Cite this article

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Dimension reduction helps to visualize high-dimensional datasets. These tools should be used thoughtfully and with tuned parameters. Sometimes, these methods take a second thought.

You have full access to this article via your institution.

methods of data presentation are

A naked-eye stare at one’s data can be the start of data analysis. But to present visualizations of data to others in a talk or a paper will take more than that. To find and render visually meaningful patterns in genetic and genomic data mountains, a researcher will likely turn to a class of class of statistical and computational tools for dimension reduction 1 , 2 , 3 , 4 , 5 . As the genetics field and its datasets have mushroomed, data visualization tools with dimension reduction algorithms have become widely adopted. But some say the tools distort and mislead.

Principal component analysis (PCA), t-distributed stochastic neighbor embedding ( t-SNE ) and uniform manifold approximation and projection ( UMAP ) are among the tools life scientists turn to for dimension reduction. Such tools “can act as either a blessing or a curse in understanding the geometric and neighborhood structures of datasets,” note the authors of a paper describing dimension reduction tools 4 . In some instances, they say, t-SNE can create spurious clusters that mislead researchers. Both t-SNE and UMAP “perform beautifully in preserving local structure but struggle to preserve global structure.”

Sharp criticism of a UMAP figure in a recent Nature paper 6 has re-triggered a long-standing discussion of these methods. Here, some researchers explain why a revision of the figure is needed. They also speak about why passion levels about dimension reduction methods run high and how to use these methods in better ways.

Know your dimensions

Biostatistician Rafael Irizarry from the Harvard T.H. Chan School of Public Health and Dana-Farber Cancer Institute dislikes many of the t-SNE and UMAP plots he sees. They offer little of value to a paper, he says, and the output from these tools is analytically intractable. “I sometimes call them an artistic rendition of the data,” he says of t-SNE and UMAP plots. They lack confidence measures and indications of how much uncertainty rests inside their visually neat data clusters.

PCA, t-SNE and UMAP reduce dimensions from a large number to a more manageable one, he says. For single-cell RNA sequencing (scRNA-seq) data, t-SNE and UMAP are often used to reduce data to two dimensions to enable plotting in papers and on slides. To highlight clusters, t-SNE and UMAP are preferred over PCA because high-dimensional datapoints that are close become “really close in the two final dimensions.” That leaves room to separate groups out. PCA is used first because it accelerates t-SNE and UMAP, which can be very slow with 20,000 dimensions, he says. Thus, many scRNA-seq analysis pipelines first reduce data dimensions with PCA to compress dimensions, say, to between 30 and 100. Then t-SNE or UMAP are run. Sure, t-SNE and UMAP are “really powerful, useful tools,” says Irizarry, and scientists should keep using them for data clustering. The output can hint at discrete clusters in a researcher’s high-dimensional data. But scientists should not rely solely on them and, he says, what must certainly cease is the widespread, misguided use of these tools in genomics.

It’s a valid concern, says University of California, Los Angeles (UCLA) researcher Jingyi Jessica Li, who works at the interface between statistics, data science and genomics, about misguided use and how intractable t-SNE and UMAP data visualizations can be. In her view, users must not choose parameter settings to “find the thing I am looking for,” she says, and thus be guilty of confirmation bias. Parameters need to be selected in justified and appropriate ways. To do so takes keeping in mind what these tools do and considering what the dimensions are of datasets one might juggle.

Says Li, in population genetics, researchers might measure one million SNPs in 100 individuals, which is a high-dimensional data pile. Separately, if a research team collects data in a large group of individuals but collects only race, gender and age data, that’s three data dimensions and thus lower-dimensional data. High-dimensional data, says University of Tübingen data scientist Dmitry Kobak, can involve only one data modality, such as expression measurements of 20,000 human genes in many single cells. A table with gene expression data on 20,000 human genes in many cells is unwieldy to look at.

One can reduce the data’s dimensions with PCA, a linear approach, says Irizarry. If, for example, two genes are correlated and have the same or close to the same measured gene expression, PCA will average those two numbers and carry one forward. “It’s a combination of compression and also a signal-to-noise improvement.”

“PCA doesn’t know any biology,” says Irizarry. It finds the linear combinations that maximize data’s variance in the first principal component (PC). The second PC maximizes variance that is not accounted for in the first PC. This continues with the third, fourth and fifth PCs, as the algorithm finds the linear combination that maximizes variability not accounted for by the other PCs. PCA-based dimension reduction will improve the speed at which a computer can chew through data analysis and, when done right, can remove some noise in the data. t-SNE and UMAP are nonlinear approaches for dimension reduction. Output with these methods is not in and of itself a confirmation of findings, and data are lost as one reduces dimensions.

As California Institute of Technology researchers Lior Pachter and Tara Chari point out 5 , given the high dimensionality of genomic datasets, dimensionality reduction is useful to filter noise, make computational analysis tractable and enable exploratory data analysis. The aim is to preserve and extract local or global structure in the data and make biological inferences. Because these methods can induce distortions, they note that “it is preferable to limit dimensionality reductions” and prefer targeted analyses that lead to “focused visuals.”

Kobak and his colleague Philipp Berens, who were interviewed jointly, know that some recommend avoiding a UMAP or t-SNE plot. They disagree with this view. Kobak agrees, though, that these plots can mislead. Of the output of t-SNE or UMAP, “it’s not the end, it’s the beginning of the analysis,” he says.

It’s a human trait to want to group data, trends and experiences, says Genevieve Wojcik, a genetic epidemiologist at Johns Hopkins Bloomberg School of Public Health. When using such dimension reduction tools, one should consider whether the grouping is relevant to the scientific question being pursued. “Every analytical decision you make is still led by your assumptions,” she says. “There’s no one truth underlying every dataset.”

methods of data presentation are

Learn the tough lessons

Revision of a figure in a Nature paper 6 authored by the US National Institutes of Health (NIH) All of Us Research Program Genomics Investigators and published in February 2024 is underway. As of press time, the revision is not completed. The paper presents analysis data on nearly 250,000 study participants, including clinical-grade whole-genome sequence data. It tallies more than 275 million previously unreported genetic variants and explores the potential associations between genotypes and nearly 120 diseases. The figure in revision is a UMAP representation of All of Us whole-genome sequencing PCA data and shows the proportion of genetic ancestry per individual in the study in terms of six ancestry groups.

After publication, a number of researchers criticized this figure on social media. Later in February, a statement attributed to All of Us CEO Josh Denny notes that the social constructs of self-identified race and ethnicity are frequently conflated with genetic similarity. According to the statement, “The attempt in the study to represent both genetic similarities and self-identified race and ethnicity in Fig. 2 raised this concern.” At the NIH All of Us Researchers Convention in early April, Denny said the figure is being revised because it “didn’t follow our best guidelines.” There was rightful criticism of this figure and the plan is to address that “this was a mistake.”

Denny mentioned in this context that NIH All of Us co-funded and co-authored a previously published report 7 in this area entitled Using Population Descriptors in Genetics and Genomics Research: A New Framework for an Evolving Field that was published by the National Academies of Sciences, Engineering, and Medicine (NASEM).

Wojcik, who was involved in compiling the NASEM report, is heartened by the response to the figure and the reaction by the All of Us researchers, whom she has found to be particularly mindful of best practices related to diversity, genetics, multi-omics and health information. Self-identified race and ethnicity have their place in population genetics as valid constructs. But these descriptors do not capture genetic aspects; they are social constructs.

In her view, the response and criticism about this figure show how the field of human genetics has changed. Awareness is heightened about the harms that standard practices can cause. But the incident also shows how much longer it takes to change the methods researchers use. “I don't think there’s anything inherently bad about UMAP,” she says, but scientists need to make decisions about the points they wish to visually present. In this instance, they sought to show how diverse the study’s population is. The data visualization choice is, however, that “in order to show diversity, you need to show separateness,” she says. That’s problematic, as is the way the algorithm is used to show six source populations. It plots the proportion of the participants’ genomes that look most like one of those six.

The category “Hispanic” means people have origins where Spanish is spoken, but “genetically speaking it doesn’t really mean that much,” she says. Nor does subdividing all Asian populations into just a few groups. People do not fall into neat clusters, she says. When using clustering algorithms, she says, researchers will want to check whether such clusters will propel their scientific questions and, as they do so, examine their assumptions about their methods decisions. More reflection about these decisions will improve population genetics and the field of human genetics overall.

Says Aravinda Chakravarti, he has heard about the figure revision but has no details. Chakravarti directs the Center for Human Genetics and Genomics at New York University’s Grossman School of Medicine and co-chaired the NASEM report along with Charmaine Royal at Duke University. Beyond correcting the long-standing practice in biomedicine of ignoring non-majority groups, Chakravarti is looking forward to discussions on how best to represent diversity in studies. Investigators “have to internalize the committee’s recommendations,” he says, and use them to make choices about methods and population descriptors.

methods of data presentation are

Don’t forget to tune

With dimension reduction methods, says Berens, it’s advisable to consider the math of these methods, keep in mind which properties of the data they keep, and learn “what they’re good at and what they’re bad at.” Such insight helps users make informed choices when working with these methods. When scientists decide what their clustering will emphasize about their data, they should remember there is interaction among the data, one’s prior beliefs and analytic choices made, he says.

PCA, says Berens, is a linear transformation with well understood mathematical properties. But looking at a chart of many plotted PCs is challenging. As humans, we prefer two dimensions for exploratory data analysis, he says. Such explorations can reveal surprising facets that were previously missed, says Kobak, but they need further confirmation. Data visualizations from dimension reduction methods are not biological findings. One cannot use them as if to say, says Kobak, “I see this — full stop — end of story, end of paper.”

Kobak and Berens assessed 8 a large-scale scRNA-seq dataset in a published study, in which they find that a t-SNE plot was not optimally generated. But, they say, when it was generated, less was known about how to apply t-SNE to such large datasets. Since then, researchers have learned more about setting parameters to better use dimension reduction to visualize large scRNA-seq datasets.

Among the parameters to care about, say Berens and Kodak, are perplexity and learning rate, which influence how the algorithms run and shape the resulting clusters. Both t-SNE and UMAP position neighbors closely, “but they do so a bit differently,” says Kobak. UMAP tends to produce more compact clusters than t-SNE. Another algorithm, called ForceAtlas2 , has also become popular in single-cell transcriptomics. Even with the same data these methods can lead to different clusters.

Dimension reduction methods such as t-SNE and UMAP represent data in k -nearest neighbors graphs. Conceptually, postdoctoral fellow Sebastian Damrich and PhD student Jan-Niklas Böhm, along with Berens and Kobak, have found that each point sits in a kind of force field. In a paper 9 and in other work, the team shows that these methods are in a continuum on an attraction–repulsion spectrum. Changing the balance between these forces alters the clustering. Some tunings preserve local structures more; others preserve global structures better. In a sense, says Kobak, there is no one t-SNE or UMAP. “You can move between them,” he says, almost as if it were one algorithm with a tuning knob. What’s useful about this is that a researcher can — by tuning the parameter of exaggeration — see fine structure with t-SNE. UMAP and ForceAtlas2 might be better suited to exploring the more global structure of that dataset. One might also choose to look at a number of plots from multiple dimension reduction tools and compare data representations and clustering processes, some of which will compress data more, others less. “We advocate looking at this entire spectrum,” says Berens. That assessment can be part of an exploratory data analysis. They can ‘turn the knob’ to see how clustering changes, says Kobak. It’s a bit like swapping objectives in a microscope, but unlike microscopy, these are not actual data but nonlinear transformations of data.

methods of data presentation are

UCLA researcher Li also highlights the importance of parameter settings when using dimension reduction methods. With t-SNE or UMAP, some researchers might just use the default settings, but “the default may not be optimal for your data,” says Li. With t-SNE, one parameter to heed, in her view, is perplexity, and with UMAP there are two so-called hyperparameters. Depending on parameter settings, data can be represented in tighter or looser clusters. “Which one would you trust?” she asks. When researchers use these tools to draw conclusions about their data related to a scientific hypothesis, she says, “then you need to be careful.” With a statistical method called single-cell dubious embedding detector (scDEED 10 ) that she, her PhD student Christy Lee, and Lucy Xia at the Hong Kong University of Science and Technology developed, she hopes researchers will have an easier time with that trust question. The team noticed that after optimizing with scDEED, t-SNE and UMAP representations look more similar to one another than before.

ScDEED performs quality assessment of the data visualization to avoid what the team calls ‘dubious embeddings’ from dimension reduction techniques such as t-SNE and UMAP. The software calculates a ‘reliability score’ for each data point and thus is a way to assess how trustworthy neighboring points are that are represented in the data visualization. The tool assesses the ‘pre-embedding space’ generated in the PCA, which precedes the dimension reduction with t-SNE or UMAP.

Running scDEED can take a moment, “because we do have to just check different parameters,” says Christy Lee. Its runtime will depend on the computing setup and dataset size. It’s worth taking the time, since having more trust in one’s data visualization is bound to propel scientific conclusions, which might, for example, be a comparison of gene expression in tumor cells and healthy ones.

Statistics is on board

Says Irizarry, “I have this saying that the reward for collaborating with a good statistician is that you publish less and more slowly.” Although it might seem slower to some, being responsible about statistical analysis is actually not always slower, he says. Good statistical analysis is crucial for good science. Statistics methods have old, deep roots that the reach back to the early days of genetics research, and statisticians have long been present in genetics and genomics collaborations. Yet he remembers decades ago hearing some famous investigators voice versions of, ‘If I need statistics, then I did the experiment wrong’. Partly thanks to genomics advances, this no longer happens, he says.

Feuds over UMAP and t-SNE have quite some history and baggage, says Wojcik. These tools need thoughtful use, but the incentive structure in science, she says, is “just not set up for well-thought-out slow and methodical science.” Wider access to statistical methods and tools are a positive, as is increased reflection when pursuing a given scientific question about whether a method is a good choice. “It’s not productive to demonize a method,” such as UMAP or t-SNE, she says. “It’s just math.” What matters, she says, is “how humans use it.”

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Guidance for submitting whole genome sequencing (WGS) data to support the pre-market assessment of novel foods, novel feeds, and plants with novel traits

The purpose of this document is to provide guidance to industry on the use of whole genome sequencing (WGS) to generate data for pre-market submissions for genetically modified plants. Commercial platforms for high-throughput sequencing were launched in the mid-2000s and continue to undergo rapid development. These platforms are now increasingly affordable, and with over a decade of experience, they are also more reliable and accessible to developers with different levels of resources. Adoption of WGS has been widespread in biological, medical and agricultural research, and more recently in clinical diagnostics and epidemiology. Canadian regulatory agencies and our international counterparts have and continue to receive pre-market submission packages that include WGS data. Given the complexity of WGS data, industry has requested guidance that will enable them to compile pre-market submission packages that facilitate the regulatory review process. The use of WGS technology is optional and data generated using traditional molecular biology methods are still acceptable.

On May 31, 2017, Health Canada and the Canadian Food Inspection Agency (CFIA) published a draft guidance document on the Health Canada website, requesting comments on this guidance from the larger stakeholder community. Comments were accepted until 12:00 a.m. EST on July 30, 2017. This final document includes minor editorial changes incorporated as a result of the comments received.

Early stages of the guidance document were developed following discussions of the Canada, United States, and Mexico Trilateral Technical Working Group (TTWG), and the perspectives of Canada's regulatory counterparts aided in developing this document. To the knowledge of Health Canada and the CFIA, this guidance document is the first to address the submission of WGS data for the pre-market assessment of genetically modified plants.

Novel Foods, Novel Feeds, and Plants with Novel Traits (PNTs) are required to undergo a mandatory pre-market assessment. Published guidance documents Footnote  1 for developers of these products list the information and data that is required in a pre-market submission, typically including a full molecular characterization. The aim of the molecular analysis is to (i) show the changes introduced into the event genome, (ii) ascertain their stability, and (iii) assist in predicting the molecular or biochemical mode of action, or in other words, the mechanisms by which the genetic changes give rise to the novel phenotypes or traits.

Data generated using classical molecular techniques, such as Southern blotting, Sanger sequencing and Polymerase Chain Reaction (PCR) –based assays, are routinely submitted by petitioners in support of their pre-market applications. These data inform on the molecular characterization end-points that regulators consider in completing their assessments, namely characterization of:

  • the DNA that was inserted, deleted or modified
  • the number of complete or partial copies of the inserted DNA
  • the organization of any inserted or altered genetic elements, including coding, regulatory and other non-coding regions; this may include sequence data of the inserted DNA and surrounding regions, where appropriate (example, to characterize a partial insertion or rearrangement)
  • the mode of inheritance and stability of the genetic change(s)

Taken together, the molecular data presented in a submission contribute evidence for the unambiguous interpretation of the nature and stability of the genetic changes contained in the event.

In recent years, a technological leap has been made with the development of massively parallel sequencing, also commonly referred to as high-throughput sequencing, next generation sequencing (NGS) or whole genome sequencing (WGS). In this guidance document the term WGS will be used. Several platforms have been developed that enable the rapid generation of large quantities of DNA sequence data. This highly automated technology is becoming increasingly accessible and affordable, and petitioners may wish to use them to generate data in support of the molecular characterization of their products.

In essence, all WGS methods involve collecting large scale genome Footnote  2 sequence data at single nucleotide resolution, usually a collection of fragments that require curation and often sophisticated computational analysis to interpret. WGS technologies and analytical methods are improving rapidly, and petitioners are advised to consult the scientific literature and device manufacturers' websites for information on the latest developments. For regulators, it is not the raw data but rather the demonstration of overall sequence quality, description and validation of the in silico (such as, computational) analysis, and data presentation that are of principal value to inform the assessment. As with any scientific data submission prepared for pre-market review, regulators reserve the right to ask for the raw data should the need arise.

In light of rapid ongoing changes in the field of sequencing, there is an absence of standardized procedures for producing and analyzing WGS data that would apply universally across all platforms and all applications of these techniques. A need was identified to set forth in a guidance document the principles and good practices that petitioners should consider in organizing and presenting a WGS based analysis as part of a pre-market submission. The aim is to ensure that the WGS data submitted to regulators is produced through a well-documented analysis and is demonstrably at least as robust as the molecular data obtained using traditional molecular biology methods. This guidance describes the expectations for information to be included in a submission with regard to the WGS study design and methodologies, data analysis and data presentation.

I. WGS vs traditional molecular biology techniques

Examples in the literature have shown how WGS data can be useful as an alternative to Southern blots in the characterization of DNA insertions (Kovalic et al., 2012; Zastrow-Hayes et al., 2015) and may be applied to transgenic or cisgenic events. For different molecular characterization end-points (example, for products of mutagenesis and/or selection, and in general for studies of trait inheritance), the use of classical methods may be more appropriate. Data produced using classical molecular methods remain acceptable for use in pre-market submissions and can be presented alone or in combination with WGS data for molecular characterization, regardless of the method of development used to produce the event.

When petitioners present data produced using traditional molecular techniques, the descriptions of the methodology and analysis are generally uncomplicated because the techniques are in widespread use and the data interpretation is typically straightforward. With WGS, each analysis can be unique and the sequence reads require customized and often sophisticated handling in order to generate interpretable results. For this reason, all manipulations applied to the sequence data have to be explained in a submission and any sequence that is eliminated from analysis requires justification.

It is up to the petitioner to demonstrate that the presented sequencing data accurately represents the event genome. Appropriate metrics, quality analyses and/or controls should be included and explained in order to give confidence to the regulator that the WGS characterization has been performed rigorously and that the results capture the genome structure and modifications accurately and completely.

II. WGS study design and methodologies

The overall strategy of the WGS study and motivation for the choice of methodology should be clearly explained. It should also be stated in the submission what molecular characterization end-points are addressed using the chosen methodology.

There are several sequencing platforms available, each offering a suite of models that are frequently updated. In addition to the instrumentation, DNA preparation kits and on-board software are optimized regularly. WGS technologies in general are powerful and versatile, however each setup has its strengths and limitations, and some are better suited than others to different sequencing challenges. The submission should state the instrument make and model, as well as the version of the on-board software.

A description of how the DNA sample was prepared should include the distribution of the fragment sizes. If a commercial kit is used, this can be stated as well, with a mention of any known performance limitations and any steps that were taken to account for these.

In the context of WGS, bias can occur where the target sequence (or sequence of interest) contains any regions (for example, GC or AT rich, low complexity, or repetitive sequences) that give rise to sequencing artifacts with the result that they are over- or underrepresented in the data. Petitioners should mention and explain if any steps were taken prior to sequencing or afterwards during the analysis to account for such biases.

Similarly, if the WGS experimental design calls for the use of controls, these should be explained. One example might be the sequencing of a reference genome spiked with target sequence, which is analogous to a positive control used in Southern blot analysis to show probe specificity.

Overall, the submission should include a clear description of the WGS study's intent and rationale. Laboratory protocols may be provided as supporting material (for example, in an appendix) and referenced in the overview of the methodology.

III. WGS data analysis

Depending on the molecular characterization end-point(s) being addressed, WGS sequence reads can be processed in different ways. The ultimate purpose of the data analysis is to generate tables and figures to present the key information distilled from the sequencing data that clearly supports the petitioner's conclusions regarding the molecular characterization end-points. Submissions should include a stepwise description of the data analysis pipeline, organized in order to facilitate the interpretation of the presented results.

The use of schematics to accompany the narrative description of the data analysis pipeline is encouraged. As appropriate, the following aspects should be included:

  • an explanation of any data cleaning and/or error correction applied to the read output, with disclosure of any eliminated outliers
  • a data quality report (for example, FASTQC Footnote  3 ). These reports present basic statistical data such as the range of read lengths, number of reads, GC content, etc., as well as charts that present quantitative measures of the overall data quality
  • literature citations for any programs or algorithms used. If new computational tools are developed by the petitioner, validation studies should be included.
  • the purpose of each step in the pipeline, for example, searching, parsing, aligning, mapping, assembly, etc. The choice of parameters, including defaults, at each computational step should be justified or explained
  • the outcome of each step in the pipeline should be stated
  • for cases in which a reference sequence is used to map reads generated from the event genome, the petitioner should identify the reference strain or variety and present a rationale for the choice of reference

Coverage depth, breadth and uniformity are key considerations for data analysis and interpretation. There is no set threshold for coverage as this will depend on the specific case. By way of example,a relatively low average coverage may be sufficient to show that a sequence of interest is present in the event genome. In order to support any conclusion that hinges on having sampled the entire genome (such as, breadth of coverage approaching 100 percent), this should be demonstrated empirically using controls or other metrics. The factors that contribute to achieving a breadth of coverage that is appropriate for different applications are reviewed by Sims et al. (2014). In any WGS study, the petitioner needs to justify why the genome coverage is adequate for their conclusions. Any gaps in coverage or regions that have either shallower or deeper coverage compared to the average may require explanation or further characterization.

IV. Presentation of the WGS data

The choice of how to present WGS data in tables and figures depends on the molecular characterization end-points addressed. Some examples can be seen in Kovalic et al. (2012) and Zastrow-Hayes et al. (2015), but petitioners are by no means limited to using these as models. The narrative text in a submission should explain and interpret the data and rationales that support the petitioner's conclusions. Information that can be presented, as relevant, include:

  • charts from the FASTQC report (Section II) or similar analyses that show the quality of the read output data
  • coverage maps showing the variation in read coverage over the loci of interest.
  • if unexpected sequence variants, substitutions, insertions, or deletions are observed in the event genome, these should likewise be explained and/or further characterized
  • if traditional molecular biology techniques are used to complement or clarify any ambiguity in interpreting the WGS data, the combined weight of evidence should be clearly explained

Glossary of terms

Kovalic, D., et al. (2012) "The Use of Next Generation Sequencing and Junction Sequence Analysis Bioinformatics to Achieve Molecular Characterization of Crops Improved Through Modern Biotechnology." Plant Genome 5(3): 149-163. doi: 10.3835/plantgenome2012.10.0026

Sims, D., et al. (2014) "Sequencing depth of coverage: key considerations in genomic analysis." Nature Reviews Genetics 15:121-132. doi:10.1038/nrg3642

Zastrow-Hayes, G.M., et al. (2015) "Southern-by-Sequencing: A Robust Screening Approach for Molecular Characterization of Genetically Modified Crops." The Plant Genome 8(1). doi:10.3835/plantgenome2014.08.0037

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Improving statistical methods to protect wildlife populations

Threats affecting more and more species

In human populations, it is relatively easy to calculate demographic trends and make projections of the future if data on basic processes such as births and immigration is known. The data, given by individuals, can be also death and emigration, which subtract. In the wild, on the other hand, understanding the processes that determine wildlife demographic patterns is a highly complex challenge for the scientific community. Although a wide range of methods are now available to estimate births and deaths in wildlife, quantifying emigration and immigration has historically been difficult or impossible in many populations of interest, particularly in the case of threatened species.

A paper published in the journal Biological Conservation warns that missing data on emigration and immigration movements in wildlife can lead to significant biases in species' demographic projections. As a result, projections about the short-, medium- and long-term future of study populations may be inadequate. This puts their survival at risk due to the implementation of erroneous or ineffective conservation strategies. The authors of the new study are Joan Real, Jaume A. Badia-Boher and Antonio Hernández-Matías, from the Conservation Biology team of the Faculty of Biology of the University of Barcelona and the Institute for Research on Biodiversity (IRBio).

More reliable population predictions

This new study on population biology is based on data collected from 2008 to 2020 on the population of the Bonelli's eagle ( Aquila fasciata ), a threatened species that can be found in Catalonia in the coastal and pre-coastal mountain ranges, from the Empordà to Terres de L'Ebre. In the study, the team emphasises the precision of the population viability analysis (PVA) methodology to improve the management and conservation of long-lived species in the natural environment.

"Population viability analyses are a set of methods that allow us to project the demography of a species into the future, mainly to quantify the probability of extinction of a given species or population of interest," says Joan Real, professor at the Department of Evolutionary Biology, Ecology and Environmental Sciences and head of the Conservation Biology team.

"To date -- he continues -- these projections have mostly been carried out only with data on births and deaths, so that migration processes were ignored because of the difficulty of obtaining these data. In other words, we are trying to make demographic projections without considering two key demographic processes."

In the study of wildlife, population models that do not incorporate immigration or emigration "have a considerable probability of leading to biased projections of future population trends. However, explicitly considering migratory processes allows us to consider all the key demographic processes that determine the future trend of a population," says expert Jaume A. Badia-Boher, first author of the study. "This allows us to be much more precise when making demographic predictions, and therefore also when planning future conservation strategies," he adds.

The development of new and more sophisticated statistical methods over the last decade has made it possible to estimate emigration and immigration in a much more accessible way than before. Including these processes in population viability analyses is therefore relatively straightforward, the paper details.

"This new perspective may imply a relevant advance in the reliability of population viability analyses, which will allow us to estimate the future trend of populations more accurately and propose conservation actions more efficiently," notes Professor Antonio Hernández-Matías. "This is of great importance given that in the current context of global change the extinction rates of species are increasing, and more and more species require urgent and effective conservation actions to reverse their decline," the expert says.

Applying methodological developments to conserve biodiversity

Introducing changes in the structure and modelling of population viability analyses can lead to multiple benefits in many areas of biodiversity research and conservation. "Methodological advances are effective when they are applied. For this reason, the application of the new methodology in populations and species of conservation interest should be promoted. It is a priority to make these methodologies known to the scientific community, managers and administration, in order to prioritise conservation actions with the best available methods," say the authors.

"In the future, new methodologies must continue to be developed, as has been done in this study, as they are key to understanding how wild populations function, what measures need to be implemented to conserve them, and how to make these measures as efficient as possible. In the case of endangered species such as the Bonelli's eagle, knowing the rates of emigration and immigration is key to understanding the state of self-sustainability of a population, and thus implementing efficient conservation measures," concludes the team.

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  • Jaume A. Badia-Boher, Joan Real, Antonio Hernández-Matías. Assumptions about survival estimates and dispersal processes can have severe impacts on population viability assessments . Biological Conservation , 2024; 292: 110550 DOI: 10.1016/j.biocon.2024.110550

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    Thankfully, we're here to help. Here are 10 data presentation tips to effectively communicate with executives, senior managers, marketing managers, and other stakeholders. 1. Choose a Communication Style. Every data professional has a different way of presenting data to their audience. Some people like to tell stories with data, illustrating ...

  9. How To Create A Successful Data Presentation

    Storytelling with data is a highly valued skill in the workforce today and translating data and insights for a non-technical audience is rare to see than it is expected. Here's my five-step routine to make and deliver your data presentation right where it is intended —. 1. Understand Your Data & Make It Seen.

  10. Mastering Art of Data Presentation for Compelling Insights

    Data analysis involves examining and interpreting data to extract insights and patterns. Data presentation focuses on visualizing those findings to make information understandable and engaging. Wrap Up. Understanding the different methods of data presentation is essential for effective communication in our data-driven world.

  11. How to Present Data in PowerPoint: Expert Strategies

    Make sure your data is accurate, up-to-date, and relevant to your presentation topic. Your goal will be to create clear conclusions based on your data and highlight trends. 2. Know your audience. Knowing who your audience is and the one thing you want them to get from your data is vital.

  12. How To Create an Effective Data Presentation in 6 Steps

    How to create data presentations. If you're ready to create your data presentation, here are some steps you can take: 1. Collect your data. The first step to creating a data presentation is to collect the data you want to use in your share. You might have some guidance about what audience members are looking for in your talk.

  13. What Is Data Presentation? (Definition, Types And How-To)

    This method of displaying data uses diagrams and images. It is the most visual type for presenting data and provides a quick glance at statistical data. There are four basic types of diagrams, including: Pictograms: This diagram uses images to represent data. For example, to show the number of books sold in the first release week, you may draw ...

  14. Data Presentation

    Methods of Data Presentation in Statistics. 1. Pictorial Presentation. It is the simplest form of data Presentation often used in schools or universities to provide a clearer picture to students, who are better able to capture the concepts effectively through a pictorial Presentation of simple data. 2.

  15. 1.3: Presentation of Data

    This page titled 1.3: Presentation of Data is shared under a CC BY-NC-SA 3.0 license and was authored, remixed, and/or curated by Anonymous via source content that was edited to the style and standards of the LibreTexts platform; a detailed edit history is available upon request. In this book we will use two formats for presenting data sets.

  16. Present Data in a PowerPoint Presentation: Tips and Methods

    Methods of Data Presentation. There are 3 main methods of data representation in PowerPoint: Textual; Tabular; Graphical. We are here for a data PowerPoint presentation, so let's focus on the last method. Graphical representation of data enables your audience to study the cause and effect relationship between two variables. It helps in easy ...

  17. Data Presentation in Research Reports: Key Principles and Tips

    1. Choose the right format. 2. Follow the design principles. 3. Adapt to your audience. 4. Here's what else to consider. Data presentation is a crucial aspect of any research report, as it ...

  18. Qualitative Presentation Strategies

    Qualitative Presentation Strategies. Nov 14, 2023. By Dr. Linda Bloomberg, and hosted by Janet Salmons, Ph.D., Research Community Manager for Sage Methodspace. Dr. Bloomberg is the author of Completing Your Qualitative Dissertation: A Road Map From Beginning to End. Use the code COMMUNITY3 for a 20% discount when you order her book, valid ...

  19. Statistical data presentation

    In this article, the techniques of data and information presentation in textual, tabular, and graphical forms are introduced. Text is the principal method for explaining findings, outlining trends, and providing contextual information. A table is best suited for representing individual information and represents both quantitative and ...

  20. Data Presentation

    Data Presentation. Authors: Josée Dupuis, PhD, Professor of Biostatistics, Boston University School of Public Health ... With this presentation method one gets a better understanding of the skewed distribution and how the groups compare. The next example is a scatter plot with a superimposed smoothed line of prediction. The shaded region ...

  21. Presentation of Data (Methods and Examples)

    Generally, the data in the statistics can be presented in three different forms, such as textual method, tabular method and graphical method. Presentation of Data Examples. Now, let us discuss how to present the data in a meaningful way with the help of examples. Example 1:

  22. 16.1.4 Data Presentation

    The types of data presentation used will depend on the data collected; Graphical Skills. Much of the data collected will be presented in the form of graphs of some form; Each type of graph is suitable for particular data sets; The graphs also may have advantages and disadvantages; Bar graphs One of the simplest methods to display discrete data

  23. PDF METHODS OF PRESENTING DATA FROM EXPERIMENTS

    Statements. The most common way of presentation of data is in the form of statements. This works best for simple observations, such as: "When viewed by light microscopy, all of the cells appeared dead." When data are more quantitative, such as- "7 out of 10 cells were dead", a table is the preferred form. Tables.

  24. What Is Data Visualization? (Definition, Types)

    What Is Data Visualization? Data visualization is a method of displaying data in graphs, charts and maps to make it easy to understand for those without knowledge of the data set. Visualization efforts must include the insights received from data, trends and patterns found within the data, as well as a way to discern complex data in a ...

  25. Seeing data as t-SNE and UMAP do

    For single-cell RNA sequencing (scRNA-seq) data, t-SNE and UMAP are often used to reduce data to two dimensions to enable plotting in papers and on slides. To highlight clusters, t-SNE and UMAP ...

  26. Dual role of the peptide-loading complex as proofreader and ...

    The peptide-loading complex (PLC) orchestrates the formation of peptide-major histocompatibility complex class I (pMHC-I) complexes for presentation on the cell surface, which is essential for identification of aberrant cells. Here, we uncover the impact of individual PLC components on the MHC-I surface composition, the intrinsic stability of ...

  27. Guidance for submitting whole genome sequencing (WGS) data to support

    The use of WGS technology is optional and data generated using traditional molecular biology methods are still acceptable. On May 31, 2017, Health Canada and the Canadian Food ... computational) analysis, and data presentation that are of principal value to inform the assessment. As with any scientific data submission prepared for pre-market ...

  28. Google AI Propose LANISTR: An Attention-based Machine Learning

    Google Cloud AI Researchers have introduced LANISTR to address the challenges of effectively and efficiently handling unstructured and structured data within a framework. In machine learning, handling multimodal data—comprising language, images, and structured data—is increasingly crucial. The key challenge is the issue of missing modalities in large-scale, unlabeled, and structured data ...

  29. Simplified Risk Stratification Model for Patients With Waldenström

    PURPOSE Patients with Waldenström macroglobulinemia (WM) have disparate outcomes. Newer therapies have emerged since the development of International Prognostic Scoring System, and MYD88L265P mutation is now frequently assessed at diagnosis, warranting reexamination of the prognostic parameters. PATIENTS AND METHODS We reviewed records of 889 treatment-naïve patients with active WM ...

  30. Improving statistical methods to protect wildlife populations

    The data, given by individuals, can be also death and emigration, which subtract. In the wild, on the other hand, understanding the processes that determine wildlife demographic patterns is a ...