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Mathematics: The only true universal language

By Martin Rees

11 February 2009

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An alien’s description of the cosmos might teach us a thing or two about the nature of reality

(Image: Wolcott Henry/National Geographic/Getty)

IF WE ever establish contact with intelligent aliens living on a planet around a distant star, we would expect some problems communicating with them. As we are many light years away, our signals would take many years to reach them, so there would be no scope for snappy repartee. There could be an IQ gap and the aliens might be built from quite different chemistry.

Yet there would be much common ground too. They would be made of similar atoms to us. They could trace their origins back to the big bang 13.7 billion years ago, and they would share with us the universe’s future. However, the surest common culture would be mathematics.

Mathematics has been the language of science for thousands of years, and it is remarkably successful. In a famous essay, the great physicist Eugene Wigner wrote about the “unreasonable effectiveness of mathematics”. Most of us resonate with the perplexity expressed by Wigner, and also with Einstein’s dictum that “the most incomprehensible thing about the universe is that it is comprehensible”. We marvel at the fact that the universe is not anarchic – that atoms obey the same laws in distant galaxies as in the lab. The aliens would, like us, be astonished by the patterns in our shared cosmos and by the effectiveness of mathematics in describing those patterns.

Mathematics can point the way towards new discoveries in physics too. Most famously, British theorist Paul Dirac used pure mathematics to formulate an equation…

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Why Mathematics Is a Language

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Mathematics is called the language of science. Italian astronomer and physicist Galileo Galilei is attributed with the quote, " Mathematics is the language in which God has written the universe ." Most likely this quote is a summary of his statement in  Opere Il Saggiatore:

[The universe] cannot be read until we have learnt the language and become familiar with the characters in which it is written. It is written in mathematical language, and the letters are triangles, circles and other geometrical figures, without which means it is humanly impossible to comprehend a single word.

Yet, is mathematics truly a language, like English or Chinese? To answer the question, it helps to know what language is and how the vocabulary and grammar of mathematics are used to construct sentences.

Key Takeaways: Why Math is a Language

  • In order to be considered a language, a system of communication must have vocabulary, grammar, syntax, and people who use and understand it.
  • Mathematics meets this definition of a language. Linguists who don't consider math a language cite its use as a written rather than spoken form of communication.
  • Math is a universal language. The symbols and organization to form equations are the same in every country of the world.

What Is a Language?

There are multiple definitions of " language ." A language may be a system of words or codes used within a discipline. Language may refer to a system of communication using symbols or sounds. Linguist Noam Chomsky defined language as a set of sentences constructed using a finite set of elements. Some linguists believe language should be able to represent events and abstract concepts.

Whichever definition is used, a language contains the following components:

  • There must be a vocabulary of words or symbols.
  • Meaning must be attached to the words or symbols.
  • A language employs grammar , which is a set of rules that outline how vocabulary is used.
  • A syntax organizes symbols into linear structures or propositions.
  • A narrative or discourse consists of strings of syntactic propositions.
  • There must be (or have been) a group of people who use and understand the symbols.

Mathematics meets all of these requirements. The symbols, their meanings, syntax, and grammar are the same throughout the world. Mathematicians, scientists, and others use math to communicate concepts. Mathematics describes itself (a field called meta-mathematics), real-world phenomena, and abstract concepts.

Vocabulary, Grammar, and Syntax in Mathematics

The vocabulary of math draws from many different alphabets and includes symbols unique to math. A mathematical equation may be stated in words to form a sentence that has a noun and a verb, just like a sentence in a spoken language. For example:

3 + 5 = 8

could be stated as "Three added to five equals eight."

Breaking this down, nouns in math include:

  • Arabic numerals (0, 5, 123.7)
  • Fractions (1⁄4, 5⁄9, 2 1⁄3)
  • Variables (a, b, c, x, y, z)
  • Expressions (3x, x 2 , 4 + x)
  • Diagrams or visual elements (circle, angle, triangle, tensor, matrix)
  • Infinity (∞)
  • Imaginary numbers (i, -i)
  • The speed of light (c)

Verbs include symbols including:

  • Equalities or inequalities (=, <, >)
  • Actions such as addition, subtraction, multiplication, and division (+, -, x or *, ÷ or /)
  • Other operations (sin, cos, tan, sec)

If you try to perform a sentence diagram on a mathematical sentence, you'll find infinitives, conjunctions, adjectives, etc. As in other languages, the role played by a symbol depends on its context.

International Rules

Mathematics grammar and syntax, like vocabulary, are international. No matter what country you're from or what language you speak, the structure of the mathematical language is the same.

  • Formulas are read from left to right.
  • The Latin alphabet is used for parameters and variables. To some extent, the Greek alphabet is also used. Integers are usually drawn from i , j , k , l , m , n . Real numbers are represented by  a ,  b ,  c , α , β , γ. Complex numbers are indicated by w and z . Unknowns are x , y , z . Names of functions are usually f , g , h .
  • The Greek alphabet is used to represent specific concepts. For example, λ is used to indicate wavelength and ρ means density.
  • Parentheses and brackets indicate the order in which the symbols interact .
  • The way functions, integrals, and derivatives are phrased is uniform.

Language as a Teaching Tool

Understanding how mathematical sentences work is helpful when teaching or learning math. Students often find numbers and symbols intimidating, so putting an equation into a familiar language makes the subject more approachable. Basically, it's like translating a foreign language into a known one.

While students typically dislike word problems, extracting the nouns, verbs, and modifiers from a spoken/written language and translating them into a mathematical equation is a valuable skill to have. Word problems improve comprehension and increase problem-solving skills.

Because mathematics is the same all over the world, math can act as a universal language. A phrase or formula has the same meaning, regardless of another language that accompanies it. In this way, math helps people learn and communicate, even if other communication barriers exist.

The Argument Against Math as a Language

Not everyone agrees that mathematics is a language. Some definitions of "language" describe it as a spoken form of communication. Mathematics is a written form of communication. While it may be easy to read a simple addition statement aloud (e.g., 1 + 1 = 2), it's much harder to read other equations aloud (e.g., Maxwell's equations). Also, the spoken statements would be rendered in the speaker's native language, not a universal tongue.

However, sign language would also be disqualified based on this criterion. Most linguists accept sign language as a true language. There are a handful of dead languages that no one alive knows how to pronounce or even read anymore.

A strong case for mathematics as a language is that modern elementary-high school curricula uses techniques from language education for teaching mathematics. Educational psychologist Paul Riccomini and colleagues wrote that students learning mathematics require "a robust vocabulary knowledge base; flexibility; fluency and proficiency with numbers, symbols, words, and diagrams; and comprehension skills."

  • Ford, Alan, and F. David Peat. " The Role of Language in Science ." Foundations of Physics 18.12 (1988): 1233–42. 
  • Galilei, Galileo. "'The Assayer' ('Il Saggiatore' in Italian) (Rome, 1623)." The Controversy on the Comets of 1618 . Eds. Drake, Stillman and C. D. O'Malley. Philadelphia: University of Pennsylvania Press, 1960. 
  • Klima, Edward S., and Ursula Bellugi. "The Signs of Language. "Cambridge, MA: Harvard University Press, 1979. 
  • Riccomini, Paul J., et al. " The Language of Mathematics: The Importance of Teaching and Learning Mathematical Vocabulary ." Reading & Writing Quarterly 31.3 (2015): 235-52. Print.
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The Deep Connection Between Math And Science

Math and science: at first glance, they seem like very different disciplines. But look closer, and you’ll find an intricate relationship underpinning discoveries from physics to genetics.

In this comprehensive 3000 word guide, we’ll unravel the integral ties between mathematics and scientific advancement. We’ll look at real-world examples of how mathematical reasoning informs scientific theory and vice versa.

You’ll gain an appreciation for how these two pillars of human knowledge depend on and enrich each other.

How Math Enables Science

Math and science are deeply intertwined, with mathematics serving as a fundamental tool that enables scientific discoveries and advancements. It provides scientists with the language and tools necessary to understand and explain the natural world.

Without math, our understanding of scientific concepts would be limited, and many scientific breakthroughs would not have been possible.

Math as the language of science

Mathematics is often referred to as the language of science because it allows scientists to express complex ideas and theories in a precise and concise manner. Just as language is essential for communication, mathematics plays a crucial role in communicating scientific concepts and theories.

It provides scientists with a common framework to express and share their findings, ensuring that scientific knowledge is universally understood.

One example of math as the language of science is found in the field of physics, where mathematical equations and models are used to describe the behavior of particles, forces, and the laws of motion.

The famous equation E=mc², derived by Albert Einstein, revolutionized our understanding of energy and mass, and it is a prime example of how mathematics can capture and explain complex scientific phenomena.

Examples of mathematical theories leading to scientific discoveries

Throughout history, mathematical theories have often paved the way for significant scientific discoveries. For instance, the theory of relativity, developed by Einstein, was a profound mathematical concept that led to groundbreaking advancements in physics.

This theory provided a new understanding of space, time, and gravity, and it has been confirmed by numerous scientific experiments and observations.

Another example is the field of genetics, where mathematical models and statistical analysis have played a crucial role in understanding patterns of inheritance and evolution. By applying mathematical principles, scientists have been able to unravel the complexity of DNA sequences, predict genetic outcomes, and develop life-saving treatments.

Math as a tool for modeling natural phenomena

Mathematics is not only used to describe scientific concepts but also serves as a powerful tool for modeling and predicting natural phenomena. By using mathematical equations and algorithms, scientists can simulate and understand complex systems, such as weather patterns, population dynamics, and the behavior of celestial bodies.

For example, meteorologists use mathematical models to predict weather patterns, allowing us to plan our activities and make informed decisions. These models take into account various factors such as temperature, humidity, and atmospheric pressure, and they can accurately forecast weather conditions for specific regions and timeframes.

How Science Drives Mathematics

The relationship between mathematics and science is deeply intertwined, with each field constantly influencing and driving advancements in the other. Science provides the real-world problems and questions that inspire new mathematical theories and concepts.

By tackling these challenges, mathematicians develop innovative methods and tools that further enhance scientific understanding. This symbiotic relationship between math and science has led to significant breakthroughs and advancements in both disciplines.

Scientific questions inspiring new mathematics

Scientific discoveries often give rise to new mathematical theories and concepts. For example, when physicists discovered quantum mechanics, a branch of physics that deals with the behavior of particles at the atomic and subatomic level, it posed numerous mathematical challenges.

Mathematicians had to develop new mathematical frameworks, such as complex analysis and linear algebra, to understand and model the intricate properties of quantum systems. This collaboration between physics and mathematics has led to significant advancements in both fields and has paved the way for technological innovations like quantum computing.

Real-world problems advancing mathematical thinking

Real-world problems and challenges faced by scientists often require mathematical tools and techniques to solve them. For instance, in the field of epidemiology, mathematical models are used to predict the spread of diseases and develop strategies for prevention and control.

These models rely on mathematical concepts such as differential equations, probability theory, and optimization techniques. As scientists encounter new and complex problems, mathematicians are pushed to develop new mathematical methods and theories to tackle these challenges.

This constant interplay between math and science fuels innovation and drives progress in both disciplines.

Computing and the symbiotic math-science relationship

The advent of computing has further strengthened the bond between mathematics and science. The development of powerful computers and sophisticated algorithms has enabled scientists to perform complex simulations and data analysis on an unprecedented scale.

These computational challenges have driven the development of new mathematical techniques, such as numerical methods and optimization algorithms, to efficiently solve these problems. On the other hand, mathematics provides the foundation for computer science and the algorithms used in various scientific fields.

The close relationship between mathematics and computer science has led to remarkable advancements in areas like artificial intelligence, machine learning, and data science.

Shared Processes of Math and Science

Observing patterns through experimentation/exploration.

One of the fundamental processes that both math and science share is observing patterns through experimentation and exploration. In the scientific method, scientists conduct experiments to gather data and observe patterns or trends that may emerge.

Similarly, mathematicians explore different mathematical concepts and patterns to identify relationships between numbers or variables. For example, in the field of statistics, mathematicians analyze data sets to identify trends and make predictions based on those patterns.

This process of observation and exploration allows both math and science to uncover new knowledge and make advancements in their respective domains.

Formulating hypotheses and theorems

Another shared process between math and science is the formulation of hypotheses and theorems. In science, hypotheses are formulated based on observations and existing knowledge, and they serve as explanations or predictions for specific phenomena.

Similarly, mathematicians formulate theorems, which are statements that are proven to be true using logical reasoning and existing mathematical principles. These hypotheses and theorems serve as the foundation for further experimentation and exploration in both math and science.

They provide a framework for testing and validating ideas, leading to a deeper understanding of the subject matter.

Proving or disproving through logic and testing

Once hypotheses or theorems are formulated, both math and science rely on the process of proving or disproving them through logic and testing. In science, experiments are designed to test the validity of a hypothesis, and the results either support or refute the initial claim.

Similarly, mathematicians use logical reasoning and mathematical proofs to verify the truth of a theorem. By subjecting their ideas to rigorous testing, both math and science aim to establish the credibility and accuracy of their findings.

It is worth noting that both math and science complement each other in many ways. For example, math provides the tools and language for scientists to quantify and analyze data, while science provides real-world applications and contexts for mathematical concepts.

This deep connection between math and science highlights the interdependence of these disciplines and the importance of their collaboration in advancing knowledge.

Overlapping Fields Applying Math and Science

The fields of math and science are deeply interconnected, with each one relying on the other to advance knowledge and understanding. The use of mathematics in scientific research and experimentation is crucial for making accurate predictions and analyzing complex data sets.

Similarly, science provides the real-world context for mathematical theories and concepts to be tested and applied. Let’s explore how math and science overlap in specific fields.

Physics: Understanding the world through math

Physics is often referred to as the fundamental science because it seeks to explain the behavior of matter and energy in the universe. It relies heavily on mathematical models and equations to describe and predict the behavior of physical phenomena.

From classical mechanics to quantum physics, mathematics is the language through which scientists understand and communicate the laws of nature.

For example, Isaac Newton’s laws of motion are expressed through mathematical equations that describe how objects move and interact with one another. These equations allow physicists to make precise predictions about the motion of planets, the behavior of fluids, and the properties of electromagnetic waves.

Furthermore, advanced mathematical concepts such as calculus and differential equations are essential tools for modeling complex systems in physics. They enable scientists to analyze the behavior of particles at the quantum level, understand the forces that govern the behavior of stars, and even predict the existence of previously unknown particles.

Engineering: Building things based on scientific truths

Engineering is the practical application of scientific knowledge and principles to design and build structures, machines, and systems that solve real-world problems. It relies on the understanding of scientific truths and the use of mathematical calculations to ensure the safety, efficiency, and functionality of the designed solutions.

Engineers utilize mathematical concepts such as algebra, geometry, and trigonometry to analyze and design structures, calculate load capacities, and determine optimal dimensions. For example, civil engineers use mathematical formulas to calculate the strength and stability of bridges, while aerospace engineers use mathematical models to design efficient aircraft wings.

Moreover, engineers often rely on computer simulations and mathematical models to test and optimize their designs before they are actually built. This allows them to predict the performance of a structure or system under various conditions and make informed decisions about the design parameters.

Computer Science: Using algorithms to analyze data

Computer science is a field that combines mathematics and technology to solve complex problems and process large amounts of data. It relies on mathematical algorithms to analyze, manipulate, and extract meaningful information from data sets.

Mathematical concepts such as logic, set theory, and graph theory are essential tools in computer science. They are used to develop algorithms that solve problems efficiently and make sense of complex data structures.

For example, algorithms based on graph theory are used to optimize network routing, while algorithms based on linear algebra are used in image processing and machine learning.

Additionally, statistical analysis plays a crucial role in computer science, as it allows programmers and data scientists to make sense of large data sets and draw meaningful conclusions. Statistical concepts like probability theory and hypothesis testing are used to analyze data and make predictions.

Cultivating Interconnected Math and Science Skills

Math and science are often viewed as separate subjects in education, but they are deeply interconnected. By integrating math and science education, students can develop a range of valuable skills that will serve them well in both academic and real-life settings.

Developing problem-solving abilities

Math and science share a common foundation in problem-solving. Both subjects require students to analyze information, identify patterns, and apply logical reasoning to find solutions. By engaging in math and science activities, students can enhance their problem-solving abilities and develop a systematic approach to tackling complex problems.

For example, when solving a physics problem, students must apply mathematical principles to analyze the problem, identify relevant variables, and derive equations to find the solution. This process requires critical thinking and the ability to connect math concepts to real-world scenarios.

Teaching logical reasoning and critical thinking

Mathematics and science are disciplines that demand logical reasoning and critical thinking skills. In math, students learn to construct logical arguments and evaluate the validity of mathematical statements.

In science, students engage in hypothesis testing, data analysis, and drawing conclusions based on evidence.

By integrating math and science education, students can develop these crucial skills in a cohesive manner. For instance, when conducting a scientific experiment, students must use critical thinking to design a methodology, collect and analyze data, and draw logical conclusions.

The ability to think critically and reason logically is essential for success in both math and science.

Fostering curiosity and creativity

Math and science education can foster curiosity and creativity in students. Both subjects provide opportunities for exploration and discovery, encouraging students to ask questions, make connections, and think innovatively.

For instance, when exploring mathematical concepts like geometry or calculus, students can engage in creative problem-solving, finding multiple solutions or discovering new patterns. In science, students can conduct experiments, make observations, and draw conclusions, fostering creativity and innovation.

By combining math and science education, students can develop a holistic approach to learning, where creativity and curiosity are nurtured alongside analytical skills.

For centuries, math and science have worked symbiotically to profoundly expand human knowledge. Mathematical reasoning unlocks new scientific insights, while scientific wonders reveal new facets of mathematics.

By teaching our children to think quantitatively and scientifically, we can prepare them to tackle the next great intellectual challenges.

Math builds the foundational language of science, just as science reveals new horizons for mathematical exploration. This dynamic interchange will continue to push boundaries we cannot yet imagine.

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Mathematics: The Language of Nature Essay

Reaction 1: The importance attached to mathematics as a science, and a collaborator for physics has fast gained credibility and recognition, especially in the context of its logical reasoning and scientific principles that supports its theories and practices. It is also seen as claiming to be the fountainhead of thoughts that have been generated through interpretations of surreal mathematics.

Reaction 2: The success gained by mathematics could be largely attributed to the fact that it is a language that has quantitative utility value; it does not relate itself with mundane business applications, but is more concerned with abstract relationships and also in terms of seeking relations within relationships, in order to critically examine the principles or theories themselves, rather than the empirical application of such tenets. (Peat & Mickens, 1990).

Reaction 3: The language of mathematics, especially in its pristine form, has been popularized because it is the only quantitative method that could possibly address theories of physics, more so, in contemporary times. The Cartesian grid, for instance, has been a striking illustration of mathematical suzerainty over physics. (Peat & Mickens, 1990).

Reaction 4: The debate whether mathematics could be treated as a language needs to be seen in the context of the fact that in certain cases, it deals with codified quantitative data which has very little to do with the abstract and conceptual thinking attributed to languages. The fact remains that mathematics may not be treated more than a technical language due to absence of conveyance of human emotions and feelings.

Reaction 5: Drawing comparison between mathematics and music, it could be said that while both follow logical order and precision, music is a sense experience that transcend normal senses, and “seeks a harmony between the four basic human functions; thought balanced by feeling and intuition by sensation.“ (Peat & Mickens, 1990).

Reaction 6: In reaching a nexus between mathematics and functioning of the human brain, it is seen that both have patterned hierarchical level of thinking and logical functioning. As a matter of fact, the brain needs to seek assimilate and correlate data in a structured and orderly manner in order to solve a mathematical problem. It is also seen that the science of mathematics also lends itself for structural integrity and coherence.

Reaction 7: The aspect of archetype cannot also be ruled out, in that scientific arguments and validations of many great mathematics have originated not from rigorous pursuit of study but from their intuitions, or gut feelings. It would also not be improbable to surmise that these hunches could form the premise of major mathematical breakthroughs in future, too. (Peat & Mickens, 1990).

Reaction 8 : It may be concluded that theories that mathematics as a precursor to physics may be valid, sustainable, and may lent credence to the reality of our very existence on earth, but it is essential that a wider perspective be taken in order to ake stock of the goals and objectives of scientific studies. It also needs to be assessed and judged in order to be able to make critical appreciation of the various empirical and scholarly treatise of mathematics as a major quantitative and value based subject amenable to interpretations and future studies.

Peat, F. David., & Mickens, Ronald E (Ed.). (1990). Mathematics and the Language of Nature . Mathematics and Sciences. (Word Scientific, 1990). (provided by the customer).

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Language of Physics, Language of Math: Disciplinary Culture and Dynamic Epistemology

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  • Published: 14 March 2015
  • Volume 24 , pages 561–590, ( 2015 )

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Mathematics is a critical part of much scientific research. Physics in particular weaves math extensively into its instruction beginning in high school. Despite much research on the learning of both physics and math, the problem of how to effectively include math in physics in a way that reaches most students remains unsolved. In this paper, we suggest that a fundamental issue has received insufficient exploration: the fact that in science, we don’t just use math, we make meaning with it in a different way than mathematicians do. In this reflective essay, we explore math as a language and consider the language of math in physics through the lens of cognitive linguistics. We begin by offering a number of examples that show how the use of math in physics differs from the use of math as typically found in math classes. We then explore basic concepts in cognitive semantics to show how humans make meaning with language in general. The critical elements are the roles of embodied cognition and interpretation in context. Then, we show how a theoretical framework commonly used in physics education research, resources, is coherent with and extends the ideas of cognitive semantics by connecting embodiment to phenomenological primitives and contextual interpretation to the dynamics of meaning-making with conceptual resources, epistemological resources, and affect. We present these ideas with illustrative case studies of students working on physics problems with math and demonstrate the dynamical nature of student reasoning with math in physics. We conclude with some thoughts about the implications for instruction.

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1 Introduction/Problem Statement

Mathematics is deeply woven into both the teaching and practice of physics. Footnote 1 Other sciences, such as chemistry, biology, geology, and meteorology often use math extensively in practice, but typically rely less heavily on it than physics does in high school and college instruction. Despite decades of experience in teaching physics with math from the high school to the graduate level, and despite years of research on “problem solving” in physics (Maloney 1994 ; Hsu et al. 2004 ), the physics community continues to have mixed success in teaching students to use math effectively in physics. A few students seem to take naturally and comfortably to the use of math to describe the physical world, but many struggle with it, both at the introductory and at the more advanced level, even though multiple math classes may be required as prerequisites for physics classes. For example, a physics major at the University of Maryland is required to take five semesters of mathematics and those intending to go on to graduate school are encouraged to take at least two more.

One of us (EFR) has been a faculty member in a large research university physics department for more than 40 years. In this time, he has observed or participated in four major re-considerations of the physics major’s curriculum. In each of these, a critical element of the discussion has been the question, “Why do so many students seem unable to use math in our physics classes, despite having had success in their prerequisite math classes?” This question is raised at all levels, from the introductory (“They can’t do simple algebra!”), to the upper division (“They have terrible trouble with simple matrix concepts!”), to the graduate (“Many of them can’t take a simple Fourier transform!”).

Sometimes, the problem is that students have failed to learn what they have been taught in their math class, and they struggle with basic mathematical concepts and manipulations. But from both our research and teaching experience, we suspect that often the issue is subtler and often has to do with students having difficulty in translating the way symbology is used to make meaning differently in math and science classes. In this reflective essay, in order to see how this might play out, we consider the issue of the use of mathematics in science from a semantic point of view, using the tools of linguistics to talk about how meaning is made.

First, we argue that there are dramatic, if often unrecognized, differences in how the disciplinary cultures of mathematics and physics use and interpret mathematical expressions. In Sect.  2 , we demonstrate through examples how the interpretation of math by physics instructors can blend in physical knowledge, changing the interpretation of the math. The result is that the equations that students learn in their math classes may look and feel very different from similar equations that they see in their science classes (especially physics). Some of these differences are deep.

The key point is this:

Although the formal mathematical syntax may be the same across the disciplines of mathematics and physics, the uses and meanings of that formal syntax may differ dramatically between the two disciplines. These differences in meaning may be masked by a similarity in the formal syntax.

The question we are raising is “How do the different disciplines make meaning with symbols?” But this implicitly relies on the answer to the question “What does meaning mean?” Since this is a subtle and difficult issue, in Sect.  3 we reach out to the disciplines of linguistics and semantics to explore the fundamental processes associated with meaning-making in the use of everyday language and bridge these processes of meaning-making to the use of mathematics.

Next, we seek to understand how students manage these multiple languages across the disciplines. In Sect.  4 we turn to making meaning with math in physics by briefly summarizing the resources theoretical framework of student cognition. This is based on a knowledge-in-pieces model modulated by dynamic framing through student expectations, epistemology, and affect. Interestingly, this structure fits well with what we have drawn from the more general research in linguistics and semantics. Finally, we consider in detail a few case studies of students reasoning with equations in physics, and we show how knowledge, epistemology, and affect interact dynamically to make different kinds of meaning for students. Section  5 gives a brief discussion of the implications for instruction.

2 Math is Different in a Physics Context

Math in science (and particularly math in physics) is not the same as doing math. It has a different purpose—representing meaning about physical systems rather than expressing abstract relationships. It even has a distinct semiotics—the way meaning is put into symbols—from pure mathematics.

It almost seems that the “language” of mathematics we use in physics is not the same as the one taught by mathematicians. There are many important differences in what seems to be the physicist’s “dialect” of speaking math, so, while related, the languages of “math in math” and “math in physics” may need to be considered as separate languages. The key difference is that loading physical meaning onto symbols does work for physicists and leads to differences in how physicists and mathematicians interpret equations. We not only use math in doing physics , we use physics in doing math . We present three examples illustrating different aspects of the cultural differences between the use of math by physicists and mathematicians and then discuss the general structure of mapping meaning to math.

2.1 Loading Meaning Onto Symbols Leads to Differences in How Physicists and Mathematicians Interpret Equations

2.1.1 corinne’s shibboleth.

Our first example is the amusing and surprising parable of “Corinne’s Shibboleth.” Footnote 2 (Dray and Manogoue 2002 ) The particular example shown in Fig.  1 tends to separate physicists from mathematicians. Try it for yourself before reading the discussion that follows.

A problem whose answer tends to distinguish mathematicians from physicists

The context of the problem encourages you to think in terms of a particular physical system. Physicists tend to think of T as a physical function —one that represents the temperature (in whatever units) at a particular point in space (in whatever coordinates). Mathematicians tend to consider T as a mathematical function —one that represents a particular functional dependence relating a value to a pair of given numbers. Footnote 3

As a result, physicists tend to answer that \( T(r,\theta ) = kr^{2} \) because they interpret \( x^{2} + y^{2} \) physically as the square of the distance from the origin. If r and θ are the polar coordinates corresponding to the rectangular coordinates x and y , the physicists’ answer yields the same value for the temperature at the same physical point in both representations. In other words, physicists assign meaning to the variables x , y , r , and θ —the geometry of the physical situation relating the variables to one another.

Mathematicians, on the other hand, may regard x , y , r , and θ as dummy variables denoting two arbitrary independent variables. The variables ( r , θ ) or ( x , y ) do not have any meaning constraining their relationship. Mathematicians focus on the mathematical grammar of the expression rather than any possible physical meaning. The function as defined instructs one to square the two independent variables, add them, and multiply the result by k. The result should therefore be \( T\left( {r,\theta } \right) \, = k(r^{2} + \theta) \) .

Typically, a physicist will be upset at the mathematician’s result. You might hear, “You can’t add r 2 and θ ! They have different units!” The mathematician is likely to be upset at the physicist’s result. You might hear, “You can’t change the functional dependence without changing the name of the symbol!” You have to write something like

To which the physicist might respond, “You can’t write that the temperature equals the entropy! That will be too confusing.” (Physicists often use S to represent entropy). Footnote 4

Note that this is a parable, not an experiment. We are exaggerating the roles of the mathematician and physicist to illustrate the point that one could have different interpretations of the same expression. In reality, practicing physicists and mathematicians lie somewhere in between these two extremes. There are times when physicists may pay careful attention to functional form—for example, when considering the transformation from a Lagrangian to a Hamiltonian or between thermodynamic potentials. Similarly, a mathematician’s back-of-the-envelope work may give preference to quick, intuitive meaning rather than formal syntax. And mathematicians are perfectly capable of reading and interpreting T ( r , θ ) as an informal polar transformation. Yet, we have given this problem dozens of times and seen the described results. Where we have crossovers, the mathematicians who give the “physicist’s answer” tend to be applied mathematics researchers, and the physicists who give the “mathematician’s answer” tend to be abstract mathematical physicists. (And we have often seen non-math major students in an introductory physics class give the mathematician’s answer.)

In their disciplinary context, the mathematicians are right, and the physicists appear to be treading a dangerous path. Once we put numbers in, the expression T (10, 30) is ambiguous. Are we supposed to use rectangular or polar coordinates to evaluate that expression? For a physicist working with measurements that have units, there is no problem since specifying “10 cm and 30°” would identify the expression as being in polar coordinates, but a mathematician in an introductory class who wants to “keep the mathematics clean” might prefer to work with pure numbers. Then, their response is obviously justified.

The fact that physicists “load” physical meaning onto both symbols and numbers in a way that mathematicians usually do not is both powerful and useful. It allows physicists to work with complex mathematical quantities without introducing the fancy math that would be required to handle some issues with mathematical rigor.

2.1.2 Filtering an Equation Through the Physics Changes How We Interpret It

A second way that physicists blend physical meaning into math is through “filtering the equation through the physics.” The way an equation is used can be strongly affected by the physics it is meant to describe. A nice example is the equation for the photoelectric effect.

This example comes from the modern physics section of the calculus-based physics class for engineers. In the photoelectric effect, electrons bound in a metal by an energy of at least Φ absorb photons of energy hf where f is the frequency of the light. If the energy (frequency) of the light is high enough, electrons will be knocked out of the metal. As usual, the instructor (EFR) tried to “twist” student expectations a bit by making small but important modifications to standard problems. The problem shown in Fig.  3 was a surprise to some of the students, but the results were more of a surprise to the instructor.

This one is pretty easy if you keep the physics to the fore. A longer wavelength corresponds to a smaller frequency so the photons have less energy after the modification. If the photons did not have enough energy to knock out an electron originally, they would certainly not have enough if their energy is reduced even more. Yet, nearly a quarter of the class responded that after the modification, there would be electrons knocked out. Their reasoning relied on the Einstein photoelectric effect equation (Fig.  2 ):

A problem where the equation hides some physics

where e is the charge on the electron, V 0 is the stopping potential, f is the frequency of the photon, and Φ is the work function of the metal. One student reasoned as follows: “If hf – Φ is zero before the change, then it will not be zero after the change. Therefore, since it’s not zero, there will be electrons knocked out.”

This reasoning highlights the fact that Eq. ( 2 ) is not actually the correct equation. There is a hidden Heaviside (theta) function that corresponds to the statement: “Do not use this equation unless the right-hand side, which corresponds to the maximum kinetic energy of the knocked out electron, is a positive number.” A mathematical equation that includes this constraint is

Typically, expert physicists (and introductory physics texts) do not bother to be explicit about this theta function. Instead of encoding the conditions of use in the mathematical formalism, physicists apply their understanding of the physical situation—in this case, checking that the energy of the photon is sufficient to knock out electrons—to evaluate if and how this equation should be used.

2.1.3 Interpreting Symbols Physically Yields Hidden Functions

Because their interest is in mathematical relationships, mathematicians teaching math classes focus on the mathematical grammar of an equation, ignoring possible physical meaning. Novice students often do the same in their physics class, to their confusion. A few years ago, one of us (EFR) gave the example shown in Fig.  3 as a quiz question to his second-semester class in algebra-based physics.

A quiz problem that students often misinterpret

The instructor had discussed the definition of electric field extensively, and he had made it “absolutely clear” (including proving the results mathematically) that the strength of the electric field was independent of the test charge—making the correct answer (b). Yet on this quiz, more than half of nearly 200 students thought that the answer should be (c). Upon discussing it with the class after the quiz, it became clear that, although many of them could quote the result “the electric field is independent of the test charge,” most of the students answering incorrectly had not thought to access that knowledge. They looked at the equation \( E = F/q \) and treated the problem as a problem in mathematical grammar. If \( E = F/q \) , then \( F/\left( {{-}3q} \right) = {-}E/3 \) .

In this situation, however, F is not an arbitrary fixed symbol. It represents the Coulomb force that the test charge feels as a result of its interaction with the source charges. It thus is not independent of the strength of the test charge. It increases proportionally as the test charge is increased, resulting in the same electric field as before.

The instructor might have written the force on the test charge as F q or F ( q ) in order to remind the students that the force in fact explicitly depended on the test charge (and after this experience, he sometimes did so). But the culture of physics expects that each symbol in an equation is to be interpreted in conjunction with its physical meaning. So, part of the acculturation of a physics student is learning to interpret the math physically, not to only focus on mathematical structure and manipulations.

2.2 Modeling the Physical World Mathematically

Using mathematical expressions in the disciplines of math or physics is a complex task. In the culture of math, this complexity arises from reasoning and operating in a well-defined and coherent mathematical structure with a particular formal syntax. Yet, the examples in Sect.  2.1 clearly demonstrate that the use of equations in physics goes beyond interpreting and processing the formal mathematical syntax. Instead of relying on explicit Heaviside functions or functional dependences, physicists’ use of math is often informed by “checking the physics.”

More precisely, in the culture of physics, the use of mathematical expressions is complex, because the ancillary physical meaning of symbols is used to convey information omitted from the mathematical structure of the equation. This is because we have a different purpose for the math: to model real physical systems.

2.2.1 Physicists and Mathematicians have Different Goals for the Use of Math

It is not just that physicists read and use equations differently from the way mathematicians do in math classes. Their goals are different. Physicists do not just want to explore the mathematical formalisms, they want to leverage those formalisms to describe, learn about, and understand physical systems.

In order to explicate the various components of the modeling process for the purpose of thinking about teaching mathematical physics, we use the diagram shown in Fig.  4 . (Redish 2005 ; Redish and Smith 2008 )

A model of mathematical modeling

We begin our description of the modeling process in the lower left by deciding what we are doing. We choose some aspects of a particular physical system we want to describe. We identify measurables—variables and parameters that we can quantify through some process of measurement (at least in principle, if not always in practice). We then decide what particular mathematical structures are appropriate for describing the features we are interested in. We then model the physical system by mapping these measurements into mathematical symbols and expressing the physical–causal relations between the measured quantities in terms of mathematical operations between the symbols.

From the mathematical structures we have chosen, we inherit transformational rules and methodologies for transforming relationships and solving equations. We can then process the math to solve problems, leading to answers we were unable to see directly from our physical understanding. This, however, leaves us with only mathematics.

We then have to interpret what the result means back in the physical system. Finally, we have to evaluate whether the result supports our original choice of model when compared to observations or whether it indicates a need to modify our model.

Each of these four steps—modeling, processing, interpreting, and evaluating—are critical skills in the toolbox of a scientist who uses math to describe the behavior of the physical world. This diagram helps a teacher focus on more than just the mathematical processing that often tends to dominate instruction in physics.

But the use of math in physics is not so simple or sequential as this diagram may tend to indicate. The physics and the math get intimately tangled, as we have seen in the examples above. For many professional physicists, the evaluation part—the part showing where the mathematical mapping does not work—is the most important one. Correcting partial models and inventing new ones are the place where physics is at its most creative. But the figure serves to emphasize that our traditional way of thinking about using math in physics classes may not give enough emphasis to the critical elements of modeling, interpreting, and evaluating.

Physics instruction tends to provide our students with ready-made often over-simplified (toy) models, and we may be exasperated—or even irritated—if students focus on details that we know to be irrelevant to the toy model we are considering. We tend to let them do the mathematical manipulations in the process step, but we rarely ask them to interpret their results and even less frequently ask them to evaluate whether the initial model is adequate. At the introductory level, our exams often require only one-step recognition, giving “cues” so we do not require our students to recognize deep structures. When they do not succeed on their own with complex problem solving, we tend to pander by only giving simple problems, on which success is not evidence of problem-solving expertise. We often do not recognize what is complex in a problem for a student and that makes it hard to design appropriate and effective problems.

Our examples show that physicists (as well as other scientists and engineers) often use ancillary physical knowledge—often implicit, tacit, or unstated—when applying mathematics to physical systems. Interestingly enough, a similar idea is valuable to linguists trying to understand how we put meaning to words—semantics. Developments in the linguistics and semantics literature help us to begin to build a terminology to be able to better describe the difference between the expectations of the cultures of physicists and mathematicians.

3 What Do We Mean by Making Meaning? Cognitive Semantics and Mathematics

To understand how we make meaning using the language of mathematics in the context of physics, let us consider what is known about how people make meaning using language in the context of daily life. Cognitive linguists have made considerable progress on this issue in the past 40 years. Although researchers have not entirely come to an overarching synthesis, they have many ideas that are valuable in helping us make sense of how we make meaning. We offer an exceedingly brief summary of a rich and complex subject, selecting those elements that are particularly relevant. We draw heavily on the work of Lakoff and Johnson ( 1980 ), Lakoff and Nuñez ( 2001 ), Langacker ( 1987 ), Fauconnier ( 1985 , 1997 ), Turner ( 1991 ), Fauconnier and Turner ( 2003 ), Evans ( 2006 ), and the overview of Evans and Green ( 2006 ).

From their textbook on modern cognitive semantics, Evans and Green identify core ideas through which meaning is made. We draw on three of these core ideas here (Evans and Green 2006 , p. 157):

Embodied cognition: Meaning is grounded in physical experience.

Encyclopedic knowledge : Ancillary knowledge creates meaning.

Contextualization : Meaning is constructed dynamically.

In this section, we will elaborate on how these principles specify how meaning is made in language and then show how those same mechanisms can be used to understand how meaning is made with mathematical expressions in both science and math.

3.1 Embodied Cognition: Meaning is Grounded in Physical Experience

Embodied cognition refers to the interaction of complex cognitive functions with basic physics experience—our sensory perceptions, motor functions, and how they are tied to cultural contexts. Infants learn what a shape is by coordinating their vision and touch. Toddlers learn the names of these shapes by associating words they hear to objects.

There are abundant examples in everyday language and conceptualization where meaning requires relating to our bodily existence in the three-dimensional world that we experience. Lakoff and Johnson ( 1980/2003 ) discuss extensive examples of many spatial orientation concepts and metaphors such as “up,” “down,” “front,” and “back” that are tied closely to our spatial experiences:

… Thus UP is not understood purely in its own terms but emerges from the collection of constantly performed motor functions having to do with our erect position relative to the gravitational field that we live in. (Lakoff & Johnson, 2004, p. 56 - 57).

This then forms the basis of structuring and understanding more abstract concepts. Metaphorical statements such as: “I’m feeling up ” or “He is really low these days” are conceptualized on the basis of physical orientations.

Lakoff and Johnson ( 1980/2003 ) point out how our bodily experiences with physical objects form the basis of conceptualizing emotions such as anger, love, and events such as inflation in terms of discrete entities or physical substances. Such conceptualization forms the basis on which we use and understand statements such as, “Inflation is backing us into a corner,” and “You’ve got too much hostility in you.” Many of these are so ingrained and automatic that we do not even realize the metaphorical nature of them in everyday use.

The thesis of embodied cognition states that ultimately our conceptual system is grounded in our interaction with the physical world: How we construe even highly abstract meaning is constrained by and is often derived from our very concrete experiences in the physical world. Note that embodied cognition is not a reference to the cognitive activity that is obviously involved in performing sensorimotor activities. The idea is that (a) our close sensorimotor interactions with the external world strongly influence the structure and development of higher cognitive facilities, and (b) the cognitive routines involved in performing basic physical actions are involved in even in higher-order abstract reasoning (Füster 1999 ).

The grounding of conceptualization in physical experience and actions also extends to higher cognitive processes such as mathematical reasoning. Lakoff and Nuñez ( 2001 ) argue that our understanding of many mathematical concepts relies on everyday ideas such as spatial orientations, groupings, bodily motion, physical containment, and object manipulations (such as rotating and stretching). Although formal mathematics may, at times, seem distinct from everyday life, one’s cognition about and understanding of such formal rules may be grounded in common, physical experiences. Thus, an understanding of the mathematics of set theory can be seen as grounded in our physical experience with containers and collections of objects, and an understanding of the arithmetic of complex numbers “makes use of the everyday concept of rotation.” (p. 29). Many of the sophisticated ideas and formulations in mathematics are intricately entwined with the physicality of our being. Footnote 5 , Footnote 6

For example, one way that “embodiment” allows mathematics to feel as if it has meaning, even in abstraction, is through symbolic forms (Sherin 1996 , 2001 , 2006 ). A symbolic form blends a grammatical signifier—a mathematical symbol template —with an abstraction of an understanding of relationships obtained from embodied experience—a conceptual schema .

One example of a symbolic form is parts - of - a - whole . A symbol template for parts-of-a-whole looks like:

The boxes indicate that any symbol may be in the box—we are only talking about the grammatical structure of the mathematical representation. The conceptual meaning put to it is that something can be considered to be made up of parts. This is something with which we have both direct physical experience and an abstract schema of parts and whole. The symbolic form is considered to be the blend of the symbol template with the conceptual schema: The boxes on the right-hand side of the equation each take on the conceptual meaning of “part,” and the box on the left-hand side takes on the conceptual meaning of “whole,” which consists of the sum of all the parts.

Another example of a symbolic form is base  +  change. The symbol template for base  +  change is written as:

The conceptual structure is that the final amount (box on left-hand side) is equal to the starting amount (box on the right-hand side) plus how much that starting amount changes by (triangle). Again, this conceptual schema is something with which we have direct physical experience and where we can expect to have abstracted a schema of change.

3.2 Encyclopedic Knowledge: Ancillary Knowledge Creates Meaning

The principle of encyclopedic knowledge implies that we understand the meaning of words not in terms of terse definitions provided in a dictionary but in reference to a contextual web of concepts (perhaps represented by other words) that are themselves understood on the basis of still other concepts.

Take the example of the word “hypotenuse,” defined as the longest side of a right-angled triangle. To understand the meaning of “hypotenuse,” one needs to understand the meaning of a triangle, “sides” of a triangle, right angle, and the idea of “longest.” These in turn require conceptualizing a plane, shapes on a plane, lines, angles, length, and so on. Understanding and conceptualizing “hypotenuse” relies on a number of ancillary concepts, which in turn rely on a background of other concepts in an expanding web of encyclopedic knowledge.

This idea of encyclopedic knowledge has been developed under various frameworks such as frame semantics (Fillmore 1976 ), domains (Langacker 1987 ), and mental spaces (Turner 1991 ). The idea common to these varied perspectives is that we can model knowledge as consisting of a large number of highly interconnected elements. At any given moment, only part of the network is active, depending on the present context and the history of that particular network. The meaning of a word in a particular utterance in a particular context is determined by what part of that complex web of knowledge is accessed by that particular utterance. Modern cognitive linguists argue compellingly for these complex links in the structure and processing of meaning:

…a number of scholars…have presented persuasive arguments for the view that words in human language are never represented independently of context. Instead, these linguists argue that words are always understood with respect to frames or domains of experience….so that the ‘meaning’ associated with a particular word (or grammatical construction) cannot be understood independently of the frame with which it is associated. (Evans and Green 2006 , p. 211)

At first look, the meaning of mathematical equations could seem terse in the dictionary sense. What does it mean to know the meaning of an equation? Consider for example:

In the strictest sense, it is a statement suggesting a simple calculation, defining the value of the quantity “ y ” in terms of the sum the product of “ m ” and “ x ” and “ b ”. Mathematics sometimes intentionally adopts such a minimalist view. What you know about a mathematical quantity is specified as precisely and as minimally as possible (with axioms), and only that knowledge is to be used in constructing new knowledge. Footnote 7

Though written mathematics can be terse and precise, the culture of math often relies on more than just a “dictionary meaning” in how a symbolic string is used and understood. For most mathematicians (and even high school students), Eq. ( 6 ) carries more meaning than the literal relation between four algebraic and two relational symbols. With a knowledge of labeling conventions, x and y are interpreted as variables capable of taking on many different values, while m and b are interpreted as constants. With this addition, the equation takes on the meaning of a relation between the independent variable ( x ) and the dependent variable ( y ). Additionally, the assumed constancy of m implies that the equation refers to a straight line. The constants now take on additional mathematical meaning: m as the slope of the line and b as the intercept on the y- axis, bringing in ideas from graphs. Thus, the meaning of the equation, understood even within the domains of mathematical conventions, straight lines, and graphs are much richer then the strict “definition” expressing the symbol “ y ” in terms of other symbols.

When we use math in physics, our rich knowledge about the physical system is additionally brought to bear in interpreting the mathematical meaning as illustrated by the examples in Sect.  2 . As another example, think about the equation from physics

where v is the velocity of an object, v 0 is the initial velocity, a is the constant acceleration of the object, and t is the time. This equation is mathematically identical to Eq. ( 6 ) and may be seen as representing a graph of a linear relationship. Footnote 8 But in the context of physics, it is connected to an even richer network of ideas involving motion, speeds, and rates of change. To understand this equation is to understand its relation to all these stores of knowledge. In other words, the meaning of equations in physics is encyclopedic just like the meaning of a word such as “hypotenuse” is encyclopedic. We will see a specific example of how students can perceive this equation in either a mathematical or physical context in Sect.  4.2.1 .

3.3 Contextualization: Meaning is Constructed Dynamically

One implication of the idea that meaning is built by linking to elements of an encyclopedic knowledge system is that the meaning of entities is not fixed but is dynamically determined based on specific contextual clues. Semanticists see linguistic units as prompts for the construction of meaning, or contextualization. Footnote 9 As described by Evans and Green this is:

a dynamic process whereby linguistic units serve as prompts for an array of conceptual operations and the recruitment of background knowledge. It follows from this view that meaning is a process rather than a discrete ‘thing’ that can be ‘packaged’ by language. Meaning construction draws upon encyclopaedic knowledge…and involves inferencing strategies that relate to different aspects of conceptual structure, organization and packaging… [Emphasis in original.] (Evans and Green 2006 , p. 162)

If utterances provide access to nodes in the network of knowledge, different parts of which are active in different moments, then the meaning of an utterance depends on the local activity of the network at any given moment. It is in this sense that the meaning is dynamic. The contexts of a particular utterance—local (what is the conversation about, with whom, etc.) and global (personal histories, social and institutional affordances, etc.)—affect the activity of the knowledge network and, in turn, the contextualization at any given moment. Thus, the meaning of an utterance is not predetermined but is constructed in the moment.

Consider the example of the word “safe” in the following sentences, both referring to a child playing on the beach (Evans and Green 2006 , p. 161):

The child is safe.

The beach is safe.

The first sentence refers to the child as free from harm. The second sentence, though identical in structure to the first, does not imply that the beach is free from harm. Rather, it implies that the beach cannot cause harm. The senses of “safe” in the two sentences (and the properties they assign to child and beach) are slightly different depending on the local context. In a different context, for example, if referring to a beach threatened by property developers, the contextualization and the meaning constructed for the second utterance could be more similar to the first meaning of safe—meaning that the beach is free from being harmed by the developers.

In light of this, we can revisit the example of the imaginary physicist and mathematician arguing about whether T ( r , θ ) should be “ \( r^{2} + \theta^{2} \) ” or “ \( r^{2} \) .” Although both could likely understand the thinking behind the two responses, each expert makes meaning according to the meanings common to their respective disciplinary cultures and the context they bring to it. We can now understand that the mathematicians who ignore the variable names are attaching meaning to the equation within the domain of simple functions and variables, while the physicists who ignore the implications of functional dependence are interpreting the equation within the domain of coordinate systems adding physical meaning to the variables.

Similarly, the idea of symbolic forms does not suggest a 1-to-1 correspondence between a particular equation and a symbol template or between a symbol template and a conceptual schema. Just as the meaning of the word “safe” can depend on the context of use, the same mathematical symbol template can, in different contexts, support different conceptual meanings. For example, \( v = v_{0} + at \) may commonly be understood as base  +  change, whereas an energy equation with the same structure, \( E = \raise.5ex\hbox{$\scriptstyle 1$}\kern-.1em/ \kern-.15em\lower.25ex\hbox{$\scriptstyle 2$} \, mv^{2} + {mgh} \) , may commonly be interpreted as parts - of - a - whole , that the total mechanical energy consists of the sum of two parts: the kinetic energy and the potential energy. Yet, it may also at times be productive to think about this same energy equation as base  +  change (or change  +  base ), say if a baseball is initially being held at the top of a tall building and is then given kinetic energy by being thrown horizontally.

Making of meaning with equations shares (at least) three key commonalities with meaning-making in language: an embodied basis, the use of encyclopedic knowledge, and contextual selection of that encyclopedic knowledge for meaning-making.

4 Making Meaning in Physics: The Resources Framework

The ideas in Sect.  3 tie in nicely with the resources framework being developed by the Physics Education Research (PER) community for analyzing student thinking in physics (diSessa 1993 ; Hammer 2000 ; Hammer et al. 2005 ; Redish 2004 ; Redish 2014 ). Footnote 10 In this framework, an individual’s reasoning is modeled as resulting from the activation of a subset of cognitive resources (tightly bound cognitive knowledge structures), activated in response to a perception and interpretation of both external and internal contexts (framing).

This framework, used in PER to understand the dynamics of how students construct meaning in physics, shares many of the key features of frameworks used to understand the dynamics of how individuals construct meaning in language.

Embodied cognition: Phenomenological primitives tie basic physics reasoning to embodied experience.

Encyclopedic knowledge : Manifold productive resources are used dynamically.

Contextualization : Activation depends on conceptual, epistemological, and affective factors.

Here, we provide examples of how the resources framework uses these same core ideas to help us describe the multiple ways in which physics students can make meaning with equations, as well as understand the dynamics of how students can shift from one meaning to another and how conceptual, epistemological, and affective responses can interact in complex ways.

4.1 Embodied Cognition: Phenomenological Primitives Tie Basic Physics Reasoning to Embodied Experience

The resources framework puts its “feet on the ground” in a manner similar to cognitive linguistics—through embodied experience. diSessa ( 1993 ) identified basic embodied elements of physics thinking as phenomenological primitives (“p-prims”). These are knowledge elements learned, often at a very young age, about how the world works. Two of their core aspects are obviousness and irreducibility —p-prims are activated easily and directly, and, as far as the user is aware, they have no structure. “That’s just the way things are.” Two examples [from many cited in diSessa’s classic ( 1993 ) paper] are “dynamic balancing” (two influences in conflict which happen to balance each other) and “Ohm’s p-prim” (an agent or impetus acts through a resistance to produce a result). For example, in thinking about how much a heavy object will move in response to a push, a student may draw on their physical intuition through Ohm’s p-prim rather than formal physics principles in their reasoning.

In a similar way, Sherin ( 2001 ) found that upper-division physics undergraduates commonly construct novel equations to model physical situations through their intuitive understanding rather than the application of formal physics rules or principles. In describing the forces on an object falling at terminal velocity, a pair of students skipped directly to writing an equation of the form \( F_{\text{gravity}} = F_{{{\text{air}}\,{\text{resistance}}}} \) . This one-step derivation precludes formal derivation from Newton’s laws, where the total force is found to be \( F_{\text{net}} = F_{\text{gravity}} - F_{\text{air\,resistance}} \) , that is inserted into Newton’s second law to give \( F_{\text{net}} = F_{\text{gravity}} - F_{\text{air\,resistance}} = ma \) . Since a is taken to be zero for terminal velocity, this results in \( F_{\text{gravity}} - F_{{{\text{air}}\,{\text{resistance}}}} = 0 \) , which means \( F_{\text{gravity}} = F_{{{\text{air}}\,{\text{resistance}}}} \) .

Instead, Sherin models these students’ solution as relying on the balancing symbolic form to associate the intuitive ideas of two influences in opposition to the symbol template □ = □. This way of leveraging the physical interpretation of the situation to affect how the mathematical equations are generated, used, and interpreted reflects physics disciplinary expertise and stands in contrast to just formally processing the mathematical syntax.

4.2 Encyclopedic Knowledge: Manifold Productive Resources are Used Dynamically

P-prims form a subset of the knowledge that individuals can bring to bear in understanding physical situations. In the resources framework, an individual’s knowledge consists of fine-grained knowledge resources. Just as some subset of our ancillary encyclopedic knowledge is applied to make meaning of language, individuals bring some subset of their resources to make meaning in physics. Different subsets of these resources can be applied to the same situation to form different meanings (just as how “the beach is safe” can be understood to either imply the safety of a beachgoer or the safety of the beach from property development). Because of the manifold possible meanings, learning physics involves refining patterns of activation of and connection to our encyclopedic knowledge base to build a coherent and stable knowledge structure that aligns with the canonical knowledge and reasoning of the discipline of physics.

Although these activations are immensely valuable for living everyday life, sometimes, when mapped into learning situations, they can be activated inappropriately or misinterpreted. One example of this is discussed in Redish ( 2014 ), (Frank 2009 , Frank and Scherr 2012 ). Students are given a set of paper tapes with dots on it. (See Fig.  5 .) The dots are made by connecting an object to the paper tape and setting the object in motion. The tape runs through a machine (Pasco Tape Timer) that taps a striking pin at a fixed rate onto the paper tape through carbon paper, making a dot every time the pin taps down as shown at the left in Fig.  5 . If the object is moving quickly, the tape moves a lot between taps and there are large spaces between the dots as shown in the sample at the top right of Fig.  5 . If the object is moving slowly, the tape moves little between taps and the dots are close together as in the bottom right of Fig.  5 .

A device for displaying the speed of motion with spaced dots and two examples

The apparatus was shown at the beginning of a recitation section, and the mechanism explained by a graduate teaching assistant. Students were working in groups, and each group of four students were given four tapes of different lengths containing six dots (as shown in Fig.  5 ). The first question in their worksheet asked, “Which tape took longer to make?” Since the pin taps at a fixed rate, any tape with six dots would take the same time to make. Multiple groups of students were seen to transition quickly from one interpretation to another. In response to the first question in the lesson, asking “Which tape took longer to maker,” many students said something like, “Obviously, it takes less time to generate the shorter tape [more closely spaced dots]… because it’ shorter.” We interpret these students as applying an easily accessible intuitive resource that “more distance implies more time” (implicitly assuming no change in velocity). A short time later, in response to a prompt asking them a more detailed question (to find the velocity), these groups reinterpret the lengths of the strips as proportional to how fast the tape was pulled through the machine, drawing on the intuitive idea that “more distance implies more speed” (implicitly assuming—correctly—no change in time).

There are two important features to note from this common reasoning trajectory. First, in different moments, a group of students can connect different cognitive resources to reach different interpretations about what the different lengths mean. Second, the groups draw on different pieces of their encyclopedic knowledge depending on how they have contexualized the task in response to the different cues in different parts of the lesson to make two different (and mutually exclusive) meanings of the same objects.

A crucial part of the resources framework is the observation that resources are general—neither right nor wrong until the context and use is specified. Although one of the students’ conclusions about the length of the ticker tapes was incorrect here, their intuitive knowledge resources cannot be defined as correct or incorrect independent of context. In linguistics, it would be wrong to interpret the sentence “Sam broke his arm, so he’s in a cast for 6 weeks” as meaning that Sam was acting in a theater performance given the context. Yet, it would be similarly incorrect to say it is wrong to think “cast” can mean “a group of actors in the same production.” With respect to the ticker tapes, although the intuition “more distance implies more time” is not correct in interpreting these ticker tape strips, it would be correct in other contexts, such as comparing airline flight times between different cities.

In the next section, we provide an example of two ways that physics students can draw on encyclopedic knowledge resources to use and interpret the equation \( v = v_{0} + at \) . We argue that although both meanings are correct ways of interpreting an equation in physics, opportunistically and productively blending physical meaning with the mathematical syntax evidences more expert-like reasoning in the discipline of physics.

4.2.1 Case Study #1: Blending Physical Meaning with Mathematical Structure

Understanding an equation in physics is not limited to connecting the symbols to physical variables and being able to perform the operations with that equation. An important component is being able to connect the mathematical operations in the equation to their physical meaning and integrating the equation with its implications in the physical world. In this section, we illustrate the differences in ways that meaning could be attached to an equation by analyzing excerpts of two clinical interviews with students in an introductory physics class for engineers (Kuo et al. 2013 ). Both excerpts focus on the students’ understanding of the equation for the velocity of an object moving with a constant acceleration: \( v = v_{0} + at \) , [Eq. ( 7 )] where v is the velocity of the object at time t , v 0 is the velocity of the object at t  = 0, and a is a constant acceleration. Both students can use the equation satisfactorily for solving problems, but the encyclopedic meaning ascribed to the equation by Alex is different than that ascribed by Pat.

In Alex’s interview, when she is asked to explain the velocity equation, she focused on the mathematical meaning of the symbols:

I: Here’s an equation; OK, you’ve probably seen it. Alex: Yeah. I: Right. So suppose you had to explain this equation to a friend from class. How would you go about doing that? Alex: Umm, okay, well, umm, I guess, first of all, well, it’s the equation for velocity. Umm, well, I would, I would tell them that it’s uh, I mean, it’s the integral of acceleration, the derivative of { furrows brow } position, right? So, that’s how they could figure it out, I don’t know. I don’t really { laughs }, I’m not too sure what else I would say about it. You can find the velocity. Like, I guess it’s interesting because you can find the velocity at any time if you have the initial velocity, the acceleration, and time…

Alex’s response suggests that she thinks about the equation as something that allows one to calculate the velocity of an object at any moment. She does refer to the velocity as the derivative of position and integral of acceleration but her comment does not reflect whether those mathematical operations connecting velocity to position and velocity to acceleration have any deeper physical meaning for her.

In Pat’s interview, she also refers to the physical meaning of the symbols in the equation, but her explanation is not limited to their names. Her explanation seems to call on her physical knowledge about motion, units, and processes of change:

I: Ok. So here’s probably an equation that you have seen before, right? And um, if you were to explain this equation to a friend from class, how would you go about explaining this? Pat: Well, I think the first thing you’d need to go over would be the definitions of each variable and what each one means, and I guess to get the intuition part, I’m not quite sure if I would start with dimensional analysis or try to explain each term before that. Because I mean if you look at it from the unit side, it’s clear that acceleration times time is a velocity, but it might be easier if you think about, you start from an initial velocity and then the acceleration for a certain period of time increases that or decreases that velocity.

Pat also looks at the physical meaning of each symbol in the equation and how they are connected. She brings in knowledge about units and how the dimensions in the equation must be consistent between terms. But she lends a deeper meaning to the equation by bringing in additional knowledge about the physical process of acceleration that changes the initial velocity. Further excerpts of her interview show that, for Pat, the mathematical formulation of Eq. ( 7 ) is stably connected to the conceptual schema of base  +  change , where you start with an initial quantity and then something changes it. The “ at” term for her reflects the total amount by which the initial value is changed. We model her reasoning as connecting the base  +  change symbolic form to relationships between the physical variables of velocity and acceleration to make meaning of this equation.

In Sect.  2 , we argue that the cultural norms of the discipline of physics include opportunistically blending in physical meaning in using and interpreting equations. Because of this, we argue here that Pat’s use of base  +  change to blend in an overall conceptual story relating velocity and acceleration onto the velocity equation reflects more expert-like physics practice.

Furthermore, we see that this interpretation of the equation affects its use in problem solving. Later in the interview, Alex and Pat use the equation to solve a problem about differences in the speeds of two balls thrown from a building at the same time with different initial velocities. Alex uses the equation as a tool to compute final velocities given the initial velocity, time, and acceleration. Pat on the other hand uses the equation much more as an expert physicist might, reaching the answer without needing to plug in numbers and carry out arithmetic calculations, and she exhibits an expert-like understanding of why the result should be what it is, based on the meaning that she assigns to the structure of the equation.

4.3 Contextualization: Activation Depends on Conceptual, Epistemological, and Affective Factors

A human mind contains a vast amount of knowledge about many things but has limited ability to access that knowledge at any given time. (Miller 1956 ) As cognitive semanticists point out, context matters significantly in how stimuli are interpreted and this is as true in a physics class as in everyday life. Sometimes, this means that structural features of the problem context cue knowledge related to physics concepts—a problem with a block on a ramp cues the conceptual knowledge of forces and motion rather than conceptual knowledge related to magnetic fields. Yet, context extends beyond the physics content of the particular problems presented. It includes the context of being a student in a physics class interacting with teachers and other students. Students bring a multitude of resources related to “ways-of-knowing” to physics classes, developed through years of experience with schooling and with knowledge building. Since “epistemology” means the science of knowing about knowledge, we refer to these as epistemological resources .

Elby and Hammer ( 2001 ) and Hammer and Elby ( 2002 , 2003 ) explore what basic ideas people use to decide they know something. Some basic epistemological resources that are relevant for our consideration of mathematics use in science include (Bing and Redish 2009 , 2012 ):

Embodied physical intuition: Knowledge constructed from experience and perception (e.g., p-prims) is reliable.

By authority: Information from an authoritative source can be trusted.

Calculation: Algorithmic computational steps lead to a trustable result.

Physical mapping to math: A mathematical symbolic representation faithfully characterizes some feature(s) of the physical or geometric systems it is intended to represent.

Mathematical consistency: Mathematical representations have a regularity and reliability that are consistent across different situations.

We can model the encyclopedic knowledge that individuals bring to bear to make contextual meaning as coordinated assemblies of resources—the coordination including conceptual, epistemological, and affective factors among others. As a result of students’ experience, both in their everyday lives and in their schooling, we note that often these coordinations of resources may develop into regular, aligned patterns. For example, if mathematical processing is frequently activated with a negative and stressful affect— this is distressingly hard —they might tend to activate together.

Although we have thus far emphasized the manifold possible patterns of resource activation, we also believe that sometimes expectations about knowledge and learning can be quite stable and reliably cued. Alignment can become strong, at least for a while and in common contexts. In asking how to transform T ( x , y ) to T ( r , θ ), we expect physics and mathematics disciplinary experts to tend to answer according to the rules of their particular disciplinary contexts. In physics, students may spend 15 minutes or longer, stuck using unproductive knowledge-building methods to solve a problem. (Bing and Redish 2008 ) Moreover, a student in a physics class may bring to bear ways of making meaning in physics—problem solving or studying strategies—that consistently fail to be useful, even though there is evidence that they possess the resources for more productive strategies (Hammer et al. 2005 ). The primacy and stability of particular patterns of aligned activations can inhibit transitions to other potentially more productive ones.

However, it is a mistake to assume that the apparent stability of one line of reasoning implies no alternatives. Just as with language, making meaning in physics is a dynamic process, often responding to shifting social situations and cues. Through the next case study, we make the point that even apparently stable modes of reasoning can be re-evaluated and shifted by an interviewer offering appropriate cues.

4.3.1 Case Study #2: How Shifts in Epistemology Support Shifts in the Meaning of Equations

As an example of the role that epistemology can play in the dynamics of meaning-making in physics, we present the case study of one student’s changing interpretations of two “isomorphic” equations (Kuo 2013 ).

Devon was interviewed the summer after his first-semester physics course. His interview started with the same prompt that Alex and Pat answered: explain the equation \( v = v_{0} + at \) . Devon’s explanation, targeted to a middle school student, was similar to Alex’s, focusing on the meaning of the variables only as much as required for using the equation as a computational tool.

Yet, we expect that Devon, an undergraduate engineering major, possesses resources for making sense of equations with base  +  change and other symbolic forms. After the velocity prompt, Devon was asked to come up with an isomorphic equation for money:

You start out with m 0 dollars, and you make r dollars per day. How many dollars ( m ) would you have at the end of d working days? Could you express the number of dollars ( m ) in an equation?

Devon quickly comes up with the correct equation: \( m = m_{0} + rd \) . When asked to explain to a middle school student how he got this equation, he explains through base  +  change, starting with the more concrete example of how much money you would make in 1 week:

Devon: So, if you work five days and you get so much money per each day, what do you do to calculate your total earnings for those five days? And I think by twelve they would know, oh just multiply by how much you get per day, OK, and that’s going to take care of this, the r times d, and then you know to get the total, they already know what you start off with so they would know to add it to that. I: Why add? Devon: Because you want to have the total, like for, you start off with a certain amount, and you want to know how much you have after the week, so your initial amount plus how much you earned that week is equal to the total amount of money that you have.

As with Pat’s explanation of \( v = v_{0} + at \) , Devon’s explanation of the money equation identifies the quantities of base (“you start off with a certain amount”), change (“how much you earned that week”), and an overall story that relates base and change to final amount (“your initial amount plus how much you earned that week is equal to the total amount of money that you have”). There are many conceptual differences in the problems that contribute to cuing Devon’s different interpretations of the two equations. Here, we highlight an epistemological difference. In the interview Devon views understanding equations in physics as memorization and understanding equations in math as understanding why those equations work:

I: When do you feel really comfortable with an equation, when do you feel that you really understand an equation? Devon: Well, in physics, I feel comfortable when I memorize the thing, and I know all the units that are attached to it. ‘Cuz as I said, I like, I’m a concrete sequential kind of guy in the math, so if I know, if I could see that the units make sense, then I know what I’m doing must be right, I don’t, I just don’t like thinking of the concepts behind it, I don’t like thinking of gravity, you know. Other people think because of this, because of gravity, it’s going to do such and such, I’m not, you know, I like just focusing on units and just if it makes sense, and I just memorize the equation, I mean, other people can derive the equations by, I don’t know, Newton’s second law or doing the free body diagrams and they can derive an equation or a certain kinematic-, but I don’t do that, I just think of what makes sense, unit wise, I guess. I: And what about math? When do you feel that you really understand an equation in math? Devon: Well, in math, well like, there’s so many proofs, and it just makes sense in my mind, I don’t know, like derivatives and integrals and Jacobian transformations. It just all makes sense to me, because there’s a reason it works, and it’s just one reason. It’s not like in physics really where there’s so many different cases like I said before. In math, like if I understand the proofs of why it’s that way, and then, I’m comfortable using that equation.

Here, two explicit, in-the-moment epistemological stances toward equations emerge. In physics, Devon prefers focusing on units and memorizing the equation rather than thinking about the concepts behind the equations. He acknowledges that other people can reason about concepts (like gravity) or derive equations from more basic principles (like Newton’s second law), but he explicitly chooses not to.

In contrast, equations in math make sense to Devon. Unlike the multiple different cases in physics, math for Devon is simpler and unified (“There’s one reason it works, and it’s just one reason.”). Perhaps because of the perceived relative simplicity, Devon seeks understanding of math equations, whereas the proliferation of equations and concepts in physics make that same kind of understanding seem too difficult to attain.

Later in the interview, Devon moves back to the physics domain to explain an equation for the speed of a car with base  +  change . This suggests that explaining the money equation not only revealed how Devon makes sense of equations in math problem contexts, but also tapped into a productive resource that he could then, with little effort, apply to make meaning with an equation in a physics context.

Devon’s reasoning provides examples of two key features of the resources framework. First, his original failure to use base  +  change does not represent a knowledge deficit. Devon’s reasoning with equations is context dependent and another problem context reveals how he can draw on base  +  change to interpret a similar equation. Second, Devon’s epistemological stances toward equations in math and physics align with and support different modes of reasoning with equations.

4.4 Contextualization: How Affect Shifts Along with Shifts in Conceptual Meaning and Epistemology

Thus far, we have discussed how the dynamics of student reasoning in physics depends on knowledge, both conceptual and epistemological. Yet, as teachers, we know that students’ affective states are as important as the knowledge they possess in determining how they make sense of physics problems. For example, as teachers, we know intuitively not to teach new material on the day of an exam because the negative affect that results will impede deep engagement with new topics.

Yet, despite this instructional intuition as well as research showing the correlations between emotions and learning, studies of physics students’ conceptual knowledge and epistemologies continue to greatly outnumber the studies that investigate the role of affect and emotions in the dynamics of those students’ reasoning. We should not take the detailed specification of conceptual and epistemological resources in the resources framework to imply that other factors, such as affect, play no role in contextualization and meaning-making. Next, we discuss a case study illustrating how affect is coupled with conceptual and epistemological resources in shifts in student reasoning.

4.4.1 Case Study #3: Student Response to Math is Dynamic and May be Mediated by Affect

Gupta and Elby ( 2011 ) report on an extremely interesting interview with a student in an introductory physics class for engineers that illustrates the dynamic response of a student trying to make sense of mathematics in a physics class and displays the interaction of conceptual, epistemological, and affective factors.

The interview occurred during the first semester of physics for engineers. The interviewer was not involved in teaching or evaluating the class. After a discussion of Eq. ( 7 ), a topic that had been discussed in class, the interviewer turned to a topic that had not yet been discussed: pressure in fluids. He presents the equation:

where p represents the pressure under the surface of a lake, p 0 is the pressure at the top of the lake, ρ is the density of water, g is the gravitational field, and h is the depth below the water’s surface. He then asks the subject, Jim, whether he has seen the equation before, and Jim replies that he has not. The interviewer then asks whether pressure 7 m beneath the surface of the lake is greater, equal to, or less than the pressure 5 m below the surface.

Jim’s first inclination is to use the equation and, after some to-ing and fro-ing, he decides that h should be negative under the surface and therefore that the pressure at 7 m below the surface should be less than that at 5 m. He is somewhat uncomfortable with this as it contradicts his intuition and experience. He has made the mistake of taking h as negative (taking positive as upward) but not also taking g as negative (gravity points down).

When asked how a friend from English class might reason about the problem (I: “Suppose, there was a friend of yours in English, [who] does not really know physics and questions, kind of thing. Could they have answered this question?”), Jim demonstrates he possesses a good physical intuition about the situation.

Jim: Like, if they have actually been under water, so the pressure, they might know a little bit about pressure under water…Like a rough estimate. The pressure was higher when I was deeper. [I: Okay] The pressure was lower when I was higher to the surface … They could argue from their personal experience like, one time I was scuba diving and I was like 30 feet below the water and pressure was like, pressure was very high. Like I was just swimming, I was just couple of feet below the water and the pressure was not that much.

But he sticks firmly to his trust of the equation. He explains he is in a physics class, states that “this is hard,” and expresses the stance that on an exam he would trust his analysis of the equation over his intuition.

Jim: For an equation to be given to you, it has to be like theory and it has to be fact-bearing. So, fact applies for everything. It is like a law. It applies to every single situation you could be in. But, like, your experience at times or perception is just different—or you don’t have the knowledge of that course or anything. So, I will go with the people who have done the law and it has worked time after time after time.

Although Jim can use his embodied experience effectively and correctly, his affect—his lack of confidence about his intuitions and sense that “physics is hard”—leads him to suppress an epistemological resource supporting “knowledge constructed from perception” and to rely instead on knowledge from authority and knowledge constructed from mathematical manipulation. This is shown in Fig.  6 a with the lines with arrows indicating activation and the lines with circles on the end indicating inhibition. He appears to have actively rejected his intuition. (Although the details of this figure are different from Gupta and Elby ( 2011 ), we align with them to the degree that our diagram aims to model how two different epistemological stances can share particular epistemological resources in common and to show a mechanism for how a contextual cue can shift one local epistemological stance to another.)

I: Do you think the [hydrostatic pressure] equation relates to [the physical experience of pressure]? Jim: Probably somehow, but not directly. I think there is some way that just completely links the two together, but itis not obvious what that relation is.

A bit later in the interview, the interviewer hints that perhaps (if he is going to insist that down is the negative direction) that he might consider the sign of g .

I: What do you think about g in [the hydrostatic pressure] equation? Should that be minus ten or plus ten? Jim: Oh! minus ten … So, that gives you a positive thing. [I: Okay.] I would say that the negative does not matter anymore. Oooh! I see. The higher you go under water, uh, the lower you go under water the more your pressure is, because the negative and the negative cancel out … So, the more under water you are the higher your pressure is going to be, I think now. I forgot to factor in g . That’s what I think. I: Okay. Is that more comfortable or less comfortable? Jim: That is more comfortable because it actually makes more sense to me now. And now your experience actually does work because from your experience being under water you felt more pressure as opposed to the surface. If I take into consideration both negatives, it is just positive, they just add up.

Jim’s epistemological stance has shifted dramatically, along with his affect. Now, his calculation (tied to the epistemological resources “knowledge constructed from mathematical manipulation” and “knowledge from authority”) is consistent with his intuition (“knowledge constructed from perception”) as shown in Fig.  6 b.

The interaction of Jim’s affect and epistemological resources with the physics context. a Before reconciliation; b after reconciliation. Faded nodes are temporarily inactive. (After Gupta and Elby 2011 )

Overall, the case studies that we have presented in this paper demonstrate that looking at meaning-making with mathematics through the lenses of embodied cognition, encyclopedic resources, and contextualization as refined by epistemological analysis gives us insight into ways in which students might not tap into their funds of productive knowledge, how the context can be shifted to reveal that productive knowledge, and how affect plays an interactive role in meaning-making dynamics.

5 Implications for Instructors

How do we interpret student difficulties with math in physics class? Common diagnoses are that students have not been taught the relevant mathematical tools in their math courses, or they have not learned those mathematical tools well enough to transfer them to their physics courses. The common solutions in either case are for physics instructors to re-teach the needed mathematical procedures and methods in the physics courses or to demand that the students take additional (or more rigorous) math courses.

Our analysis of the roles of physics and math from the point of view of language and meaning-making suggests an alternative diagnosis: Even if students have learned the relevant mathematical tools in their math courses, they still need to learn a component of physics expertise not present in math class—tying those formal mathematical tools to physical meaning.

To succeed in physics, students need not just to be fluent with mathematical processing in the context of physics, but also with the mathematical modeling of physical systems, blending physical meaning with mathematical structures, and interpreting and evaluating results. We as physics instructors must explicitly foster these components of expert physics practice to help students succeed in using math in physics.

At a finer-grained level, we are also teaching them how to integrate their everyday embodied and conceptual knowledge with math and how to reliably activate appropriate epistemological resources. Some of these ideas have been discussed in the literature (Tuminaro and Redish 2007 ; Bing and Redish 2009 , 2012 ; Kuo et al. 2013 ).

The take-away message is:

How mathematical formalism is used in the discipline of mathematics is fundamentally different from how mathematics is used in the discipline of physics – and this difference is often not obvious to students. For many of our students, it is important to explicitly help them learn to blend physical meaning with mathematical formalism.

The question then is, “How do we help them learn to blend physical meaning with mathematical formalism?” The three case studies we have presented suggest that even when we do not see it, the seeds of this blending are already there. Although we commonly see students failing to use math in physics, case study #1 suggests that some students, like Pat, are already engaging in expert-like use of equations in physics. Case studies #2 and #3 show examples where students who initially reason from the formal procedures of mathematics shift to layering physical meaning onto the math. Importantly, these shifts occurred without direct instruction, suggesting that students possess productive resources for interpreting math physically, which as instructors we need to help them identify and activate reliably.

To help students integrate physical meaning with the mathematics they are learning and using, we have to use our knowledge of what productive knowledge they possess, what can cue different knowledge elements, what epistemological resources students tend to use, how they feel about physics and math, and how all these elements interact.

While this is easy to say, it can be hard to do. Many physicists have spent years building their fluency and competency with mathematical manipulations until the blending of math with physical meaning becomes natural and often automatic. For many physicists, the easiest way to get through to meaning is to begin with the mathematical relations that come easily to them.

Because of this fluency with blending physical meaning with mathematical manipulations, we have observed physics instructors (including ourselves), teaching at both the introductory and advanced levels, stressing mathematical manipulation as the “go-to” resource for building knowledge. Sample problems done on the board and homework tasks often stress the processing step of the mathematical modeling model described in Fig.  4 , omitting the steps of modeling, evaluating, and interpreting, as well as the critical meaning-making steps of contextualizing physically and tying to physical experience and encyclopedic knowledge. While for experts a math-based approach may be aligned with “physical mapping to math,” for novices who do not yet fluently blend math and physical meaning, the emphasis on mathematical processing can support epistemologies that give primacy to formal laws, equations, and computational reliability to the exclusion of physical meaning.

We argue that instruction not only needs to highlight aspects of how expert physicists layer physical meaning onto mathematics, but also to tap into productive student resources for doing so. Here are two examples.

5.1 Can You Do It Without the Equations?

In 1992, the senior author of this paper (EFR) decided to switch his research effort to physics education (after 25 years as a theoretical physicist). To learn the ropes, he decided to spend a sabbatical year at the University of Washington, where Lillian McDermott (McDermott 1984 ) and her Physics Education Group were building the groundbreaking lessons, Tutorials in Introductory Physics (McDermott and Shaffer 1992 , 2001 ; Shaffer and McDermott 1992 ). As part of his experience in learning how to build lessons that worked, the senior author was being trained as a facilitator for the tutorial lessons. Groups of graduate students, postdocs, and faculty worked through the lesson, discussing how students might respond.

The first week’s lesson concerned electric currents and involved the now famous “batteries and bulbs” tasks. The first serious question showed the diagram in Fig.  7 and asked, “If all the bulbs in the circuit below are identical, rank the brightness of the bulbs.”

A batteries and bulbs problem (McDermott and Shaffer 1992 ). If the four bulbs are identical, rank the brightness of the bulbs

Your experienced theoretical physicist saw no problem with this. “This is a simple Kirchhoff’s law problem with two current loops. If I define a current I 1 in the left loop and I 2 in the right loop, the drops around each loop have to add to the rises, so I get two equations in two unknowns:

which are easily solved for the currents. The brightness of each bulb is just the power dissipated, I 2 R , so the ranking of the bulbs is like the ranking of the currents. Since my solution gave me I 1  = 2 I 2 , we must have A = D > B = C.”

Our theoretical physicist’s partner in the task was Richard Steinberg, then a first-year postdoc fresh out of an Applied Physics Ph.D. at Yale. He smiled and asked, “Can you do it without the equations?” Our theoretical physicist frowned, and responded, “Why should I?” Steinberg’s reply, “Perhaps your students aren’t as fluent with equations as you are” brought a reluctant attempt. The theorist found it surprisingly difficult at first. But after a while, the fog lifted and he realized it was much easier without the equations—and that the equations supported an interpretation in physical terms. Here is a physical analysis.

Current is conserved so it has to be continuous and divide at junctions (sum of currents in equals sum of currents out). So, whatever current goes through the battery has to also go through bulb A. At the junction to the second loop, the current will split. Since both paths have equal resistance, the current will split equally, so the current in B will equal the current in C. At the bottom, they come back together and yield the original current. So, the current in D is the same as in A—and twice that in B and C. This is the same result as given by the two equations in two unknowns, but it ties directly to the embodied concept of conserved physical flow.

Although experienced physicists will see exactly how this physical analysis connects to the mathematics of the Kirchoff’s law solution, students may not. Recently, one of us (EFR) was serving in the help center when a student asked for help with a circuit problem of the same level of complexity as the one shown above. He had struggled for an hour trying to set up and solve the Kirchhoff’s law loop equations as he had been taught in class. When he was introduced to the conceptual approach to using the basic principles, he lit up and was able to solve the problem quickly and easily, saying, “Why weren’t we shown this way to do it?” He would still need to bring his conceptual understanding into line with the mathematical reasoning needed to set up more complex problems, but the conceptual base made sense to him as a starting point in a way that the algorithmic math did not.

Instructionally, for many students, the first step needs to be highlighting the physical meaning, as Steinberg did by asking, “Can you do it without the equations?” However, the instruction is incomplete until these physical interpretations are tied back to the formal mathematical laws. For example, the conceptual idea that currents are continuous and that the voltage drop across each resistor should sum to the voltage supplied by the battery is represented mathematically through the procedure of writing the voltage changes around a closed loop and by interpreting the final equation with the parts - of - a - whole symbolic form.

The benefits of this physical meaning here are twofold: (1) The procedure of Kirchoff’s law analysis is no longer a brittle, rote procedure, but it has meaning. It is backed up by links to encyclopedic knowledge about the physical system, and (2) it may yield conceptual shortcuts in complicated circuits where setting up the equations for multiple loops may be more challenging.

5.2 Tapping into Physical Intuition for Understanding Mathematics

The senior author has also had multiple opportunities to observe the instruction of a number of physics faculty. A particularly interesting example occurred in a class of mostly biology majors in which students were learning to read potential energy graphs and relate them to forces. The students were shown Fig.  8 a and asked the question: “If two atoms have a total energy E shown by the horizontal line labeled “E”, and the potential energy interaction is as shown by the curve in the figure, when they are at a separation indicated by C, is the force between them attractive or repulsive?”

The students were still at an early stage in learning to read potential energy diagrams and struggled with the question. In two different classes, two different instructors essentially responded with the argument, “Remember the equation shown on the board [Eq. ( 10 )]. Since the derivative of the PE curve at C is positive [the slope of the tangent line in Fig.  8 (b)], the force is negative, which means it’s attractive.” [Both instructors wrote Eq. ( 10 ) on the board, but neither actually drew Fig.  8 b.]

Again, for students who have not developed facility in reading physical meaning from mathematical expressions, they may make sense of this lesson with the epistemological resources, by trusted authority (the remembered equation) and calculation .

A more effective approach for this population might be to begin with an embodied analogy and implicitly supporting epistemologies valuing physical intuition. Start with treating a potential energy curve as a track or hill and, using the analogy of gravitational PE, then place a ball on the hill as shown in Fig.  8 c. Which way will it roll? In conversations with a number of these students, none had any difficulty in coming up with the correct answer. Then, inferring that the force was to the left, they were able to see that the force to the left implied a positive slope for the PE via Eq. ( 10 ) and were then easily able to explain how that could be seen from the graph and the equation.

Three figures illustrating different epistemological approaches to an explanation. a The figure shown in the problem; b an explanation based on a formula; c an explanation based on a physical analogy

Two plausible models of epistemological resources activated for the examples in 5.1 and 5.2. The one on the left models what resources physicists may activate when starting from formal equations. The one on the right models a chain that may be more useful in helping introductory students learn the value of math in science

5.3 Teaching Physics Standing on Your Head

In the two examples discussed in Sects.  5.1 and 5.2 , one could model the physicist’s active epistemologies in the two competing instructional sequences as connected chains of epistemological resources, as displayed in Fig.  9 . The one at the left starts from valuing formalized equations and principles. The one at the right gives primacy to physical intuition and embodied experience. In many instructional situations (especially with novice or non-physics major students), the sequence on the right can be more effective for supporting the blending of physical meaning and mathematics, despite the comfort that an experienced physicist might have with the one on the left. There are two reasons for this.

The first is that we want to provide students with experience with the physics disciplinary practice of physically making meaning with mathematics. Starting from the mathematical laws of physics, while efficient, may not make the underlying physical meaning in those expressions visible to novices. From the two examples above, starting from the physical meaning and then explicitly mapping this meaning to the mathematics can help make this connection explicit for physics students (as well as instructors) for particular topics and help students see how to make this connection more generally.

The second is that, in physics, we want students to learn to take an epistemological stance that coherence between physical meaning and mathematical formalism is valuable and productive. Although in particular moments, experts may appeal to formalized physics laws and equations, we believe that that those same experts, in other moments, regularly blend physical meaning with the mathematics. However, novice students, even those capable in math, have to learn to the language of associating physical meaning with math. Because the connection between the physical meaning and the mathematics is more opaque (especially for novices) in the left epistemological chain, students may see it as an example where physics class values knowledge from authority over physical intuition. This has the instructional consequence of encouraging a novice epistemological stance (memorizing equations without understanding) even while facilitating and quickly generating a “correct” answer.

In both of our examples in this section, experienced physicists’ epistemologies could be plausibly modeled through the sequence on the left, and, for them, we expect that this sequence is stable and reliable. This is likely because this sequence can be very productive in a physics researcher’s career. Yet, the stability of this instructional sequence may also work to inhibit the activation of other sequences in instruction that may better support the student epistemologies we believe are productive for making sense of math in physics.

It might well be preferable to “teach physics standing on your head” by beginning with the physical meaning and creating a chain of association to the math, both strengthening the students’ skills of “seeing physical meaning” in equations and helping them develop the epistemological stance that equations in physics should be interpreted physically.

We suggest that an analysis of instructional success and activity building using this sort of analysis might prove productive in research and in the building of instructional materials. (See, for example, Elby 2001 ; Gupta and Elby 2011 ; Bing and Redish 2012 ; Kuo et al. 2013 ).

6 Conclusion

In a standard interpretation, lack of success with math in physics is attributed to a failure to transfer mathematical skills from math class to physics class. The considerations raised here suggest an alternative possible diagnosis: Learning math in math class and math in physics class should be treated as learning two related but distinct languages: Although there is significant overlap, there are also important differences, and expertise in one does not guarantee expertise in another. Although both physics and math make meaning in the way that any language does—by building on physical experience, by drawing on broad (encyclopedic) knowledge, and by contextualizing—they do so in different ways. We must recognize that we are asking students to become bilingual and provide instruction and practice in blending in physical interpretation on the mathematical formalism. This perspective raises significant issues both for research and for instruction.

Parts of this paper are based on contributions to conference proceedings (Redish 2005 ; Redish and Gupta 2010 ).

A “shibboleth” is a word or phrase that can be used to distinguish members of a group from non-members.

Mathematicians use an abstract analog of a physical function in classes such as manifold theory, but it is only commonly used in math classes at an advanced level.

One of us (EFR) was told in a college math class for math majors that using the same symbol to represent different functional dependences was “an abuse of notation.”

Of course, only parts of these experiences are extracted and abstracted in building abstract concepts. To see more detail of how these “partial analogies” are used to build conceptual meaning into rigorous concepts in mathematics, see Fauconnier and Turner ( 2003 ) and Alexander ( 2012 ).

It is interesting to note that these ideas are foreshadowed in the highly influential work of Poincare ( 1905 ).

Although this is the ideal, many mathematicians argue that there are subtle issues that prevent this ideal from ever being realized, even in principle. (Goldstein 2006 ; Carroll 1897 ).

We note that the order of what is interpreted as the “base” and “change” is reversed in the way our two examples are usually presented. We are not aware of any research on the implications of such an exchange for an interpretation of the symbolic form, but for our purposes base   +   change and change   +   base are conceptually identical interpretations, if not identical in grammatical structure.

Evans and Green ( 2006 ) refer to this term as conceptualization . We have chosen a different term for two reasons: to focus on the fact that this process is the response to context and to differentiate from the different use of the word concept by physics education researchers.

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Acknowledgments

We are grateful for discussions with Andrew Elby and Ayush Gupta on the topic of this paper. We would like to thank the members of the University of Maryland Physics and Biology Education Research Groups for many relevant conversations. This work was supported in part by a grant from the US National Science foundation.

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Redish, E.F., Kuo, E. Language of Physics, Language of Math: Disciplinary Culture and Dynamic Epistemology. Sci & Educ 24 , 561–590 (2015). https://doi.org/10.1007/s11191-015-9749-7

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Abstract: Large decoder-only language models (LLMs) are the state-of-the-art models on most of today's NLP tasks and benchmarks. Yet, the community is only slowly adopting these models for text embedding tasks, which require rich contextualized representations. In this work, we introduce LLM2Vec, a simple unsupervised approach that can transform any decoder-only LLM into a strong text encoder. LLM2Vec consists of three simple steps: 1) enabling bidirectional attention, 2) masked next token prediction, and 3) unsupervised contrastive learning. We demonstrate the effectiveness of LLM2Vec by applying it to 3 popular LLMs ranging from 1.3B to 7B parameters and evaluate the transformed models on English word- and sequence-level tasks. We outperform encoder-only models by a large margin on word-level tasks and reach a new unsupervised state-of-the-art performance on the Massive Text Embeddings Benchmark (MTEB). Moreover, when combining LLM2Vec with supervised contrastive learning, we achieve state-of-the-art performance on MTEB among models that train only on publicly available data. Our strong empirical results and extensive analysis demonstrate that LLMs can be effectively transformed into universal text encoders in a parameter-efficient manner without the need for expensive adaptation or synthetic GPT-4 generated data.

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  25. Innovative Practices in Teachers' and Students' Trainings

    The present work is dedicated to innovative educational practices, that are based on teaching and learning through the methods of science, technology, engineering and mathematics (STEM), combined with the use of various digital tools, suitable for implementation in the learning process both in face-to-face and distance learning. The present work is dedicated to innovative educational practices ...

  26. Computer Science > Computation and Language

    This work introduces an efficient method to scale Transformer-based Large Language Models (LLMs) to infinitely long inputs with bounded memory and computation. A key component in our proposed approach is a new attention technique dubbed Infini-attention. The Infini-attention incorporates a compressive memory into the vanilla attention mechanism and builds in both masked local attention and ...

  27. LLM2Vec: Large Language Models Are Secretly Powerful Text Encoders

    Large decoder-only language models (LLMs) are the state-of-the-art models on most of today's NLP tasks and benchmarks. Yet, the community is only slowly adopting these models for text embedding tasks, which require rich contextualized representations. In this work, we introduce LLM2Vec, a simple unsupervised approach that can transform any decoder-only LLM into a strong text encoder. LLM2Vec ...