In mathematics, an expression is a written arrangement of symbols following the context-dependent, syntactic conventions of mathematical notation. Symbols can denote numbers, variables, operations, and functions. Other symbols include punctuation marks and brackets, used for grouping where there is not a well-defined order of operations.
Expressions are commonly distinguished from formulas: expressions are a kind of mathematical object, whereas formulas are statements about mathematical objects. This is analogous to natural language, where a noun phrase refers to an object, and a whole sentence refers to a fact. For example, is an expression, while the inequality is a formula.
To evaluate an expression means to find a numerical value equivalent to the expression. Expressions can be evaluated or simplified by replacing operations that appear in them with their result. For example, the expression simplifies to , and evaluates to
An expression is often used to define a function, by taking the variables to be arguments, or inputs, of the function, and assigning the output to be the evaluation of the resulting expression. For example, and define the function that associates to each number its square plus one. An expression with no variables would define a constant function. Usually, two expressions are considered equal or equivalent if they define the same function. Such an equality is called a "semantic equality", that is, both expressions "mean the same thing."
History
Early written mathematics
The earliest written mathematics likely began with tally marks, where each mark represented one unit, carved into wood or stone. An example of early counting is the Ishango bone, found near the Nile and dating back over 20,000 years ago, which is thought to show a six-month lunar calendar.Ancient Egypt developed a symbolic system using hieroglyphics, assigning symbols for powers of ten and using addition and subtraction symbols resembling legs in motion. This system, recorded in texts like the Rhind Mathematical Papyrus (c. 2000–1800 BC), influenced other Mediterranean cultures. In Mesopotamia, a similar system evolved, with numbers written in a base-60 (sexagesimal) format on clay tablets written in Cuneiform, a technique originating with the Sumerians around 3000 BC. This base-60 system persists today in measuring time and angles.
Syncopated stage
The "syncopated" stage of mathematics introduced symbolic abbreviations for commonly used operations and quantities, marking a shift from purely geometric reasoning. Ancient Greek mathematics, largely geometric in nature, drew on Egyptian numerical systems (especially Attic numerals), with little interest in algebraic symbols, until the arrival of Diophantus of Alexandria, who pioneered a form of syncopated algebra in his Arithmetica, which introduced symbolic manipulation of expressions. His notation represented unknowns and powers symbolically, but without modern symbols for relations (such as equality or inequality) or exponents. An unknown number was called . The square of was ; the cube was ; the fourth power was ; the fifth power was ; and meant to subtract everything on the right from the left. So for example, what would be written in modern notation as: Would be written in Diophantus's syncopated notation as:
In the 7th century, Brahmagupta used different colours to represent the unknowns in algebraic equations in the Brāhmasphuṭasiddhānta. Greek and other ancient mathematical advances, were often trapped in cycles of bursts of creativity, followed by long periods of stagnation, but this began to change as knowledge spread in the early modern period.
Symbolic stage and early arithmetic
The transition to fully symbolic algebra began with Ibn al-Banna' al-Marrakushi (1256–1321) and Abū al-Ḥasan ibn ʿAlī al-Qalaṣādī, (1412–1482) who introduced symbols for operations using Arabic characters. The plus sign (+) appeared around 1351 with Nicole Oresme, likely derived from the Latin et (meaning "and"), while the minus sign (−) was first used in 1489 by Johannes Widmann.Luca Pacioli included these symbols in his works, though much was based on earlier contributions by Piero della Francesca. The radical symbol (√) for square root was introduced by Christoph Rudolff in the 1500s, and parentheses for precedence by Niccolò Tartaglia in 1556. François Viète’s New Algebra (1591) formalized modern symbolic manipulation. The multiplication sign (×) was first used by William Oughtred and the division sign (÷) by Johann Rahn.
René Descartes further advanced algebraic symbolism in La Géométrie (1637), where he introduced the use of letters at the end of the alphabet (x, y, z) for variables, along with the Cartesian coordinate system, which bridged algebra and geometry.Isaac Newton and Gottfried Wilhelm Leibniz independently developed calculus in the late 17th century, with Leibniz's notation becoming the standard.
Variables and evaluation
In elementary algebra, a variable in an expression is a letter that represents a number whose value may change. To evaluate an expression with a variable means to find the value of the expression when the variable is assigned a given number. Expressions can be evaluated or simplified by replacing operations that appear in them with their result, or by combining like-terms.
For example, take the expression ; it can be evaluated at x = 3 in the following steps:
, (replace x with 3)
(use definition of exponent)
(simplify)
A term is a constant or the product of a constant and one or more variables. Some examples include The constant of the product is called the coefficient. Terms that are either constants or have the same variables raised to the same powers are called like terms. If there are like terms in an expression, one can simplify the expression by combining the like terms. One adds the coefficients and keeps the same variable.
Any variable can be classified as being either a free variable or a bound variable. For a given combination of values for the free variables, an expression may be evaluated, although for some combinations of values of the free variables, the value of the expression may be undefined. Thus an expression represents an operation over constants and free variables and whose output is the resulting value of the expression.
For a non-formalized language, that is, in most mathematical texts outside of mathematical logic, for an individual expression it is not always possible to identify which variables are free and bound. For example, in , depending on the context, the variable can be free and bound, or vice-versa, but they cannot both be free. Determining which value is assumed to be free depends on context and semantics.
Equivalence
An expression is often used to define a function, or denote compositions of functions, by taking the variables to be arguments, or inputs, of the function, and assigning the output to be the evaluation of the resulting expression. For example, and define the function that associates to each number its square plus one. An expression with no variables would define a constant function. In this way, two expressions are said to be equivalent if, for each combination of values for the free variables, they have the same output, i.e., they represent the same function. The equivalence between two expressions is called an identity and is sometimes denoted with
For example, in the expression the variable n is bound, and the variable x is free. This expression is equivalent to the simpler expression 12 x; that is The value for x = 3 is 36, which can be denoted
Polynomial evaluation
A polynomial consists of variables and coefficients, that involve only the operations of addition, subtraction, multiplication and exponentiation to nonnegative integer powers, and has a finite number of terms. The problem of polynomial evaluation arises frequently in practice. In computational geometry, polynomials are used to compute function approximations using Taylor polynomials. In cryptography and hash tables, polynomials are used to compute k-independent hashing.
In the former case, polynomials are evaluated using floating-point arithmetic, which is not exact. Thus different schemes for the evaluation will, in general, give slightly different answers. In the latter case, the polynomials are usually evaluated in a finite field, in which case the answers are always exact.
For evaluating the univariate polynomial the most naive method would use multiplications to compute , use multiplications to compute and so on for a total of multiplications and additions. Using better methods, such as Horner's rule, this can be reduced to multiplications and additions. If some preprocessing is allowed, even more savings are possible.
Computation
A computation is any type of arithmetic or non-arithmetic calculation that is "well-defined". The notion that mathematical statements should be 'well-defined' had been argued by mathematicians since at least the 1600s, but agreement on a suitable definition proved elusive. A candidate definition was proposed independently by several mathematicians in the 1930s. The best-known variant was formalised by the mathematician Alan Turing, who defined a well-defined statement or calculation as any statement that could be expressed in terms of the initialisation parameters of a Turing machine.[page needed] Turing's definition apportioned "well-definedness" to a very large class of mathematical statements, including all well-formed algebraic statements, and all statements written in modern computer programming languages.
Despite the widespread uptake of this definition, there are some mathematical concepts that have no well-defined characterisation under this definition. This includes the halting problem and the busy beaver game. It remains an open question as to whether there exists a more powerful definition of 'well-defined' that is able to capture both computable and 'non-computable' statements. All statements characterised in modern programming languages are well-defined, including C++, Python, and Java.
Common examples of computation are basic arithmetic and the execution of computer algorithms. A calculation is a deliberate mathematical process that transforms one or more inputs into one or more outputs or results. For example, multiplying 7 by 6 is a simple algorithmic calculation. Extracting the square root or the cube root of a number using mathematical models is a more complex algorithmic calculation.
Rewriting
Expressions can be computed by means of an evaluation strategy. To illustrate, executing a function call f(a,b)
may first evaluate the arguments a
and b
, store the results in references or memory locations ref_a
and ref_b
, then evaluate the function's body with those references passed in. This gives the function the ability to look up the original argument values passed in through dereferencing the parameters (some languages use specific operators to perform this), to modify them via assignment as if they were local variables, and to return values via the references. This is the call-by-reference evaluation strategy. Evaluation strategy is part of the semantics of the programming language definition. Some languages, such as PureScript, have variants with different evaluation strategies. Some declarative languages, such as Datalog, support multiple evaluation strategies. Some languages define a calling convention.
In rewriting, a reduction strategy or rewriting strategy is a relation specifying a rewrite for each object or term, compatible with a given reduction relation. A rewriting strategy specifies, out of all the reducible subterms (redexes), which one should be reduced (contracted) within a term. One of the most common systems involves lambda calculus.
Well-defined expressions
The language of mathematics exhibits a kind of grammar (called formal grammar) about how expressions may be written. There are two considerations for well-definedness of mathematical expressions, syntax and semantics. Syntax is concerned with the rules used for constructing, or transforming the symbols of an expression without regard to any interpretation or meaning given to them. Expressions that are syntactically correct are called well-formed. Semantics is concerned with the meaning of these well-formed expressions. Expressions that are semantically correct are called well-defined.
Well-formed
The syntax of mathematical expressions can be described somewhat informally as follows: the allowed operators must have the correct number of inputs in the correct places (usually written with infix notation), the sub-expressions that make up these inputs must be well-formed themselves, have a clear order of operations, etc. Strings of symbols that conform to the rules of syntax are called well-formed, and those that are not well-formed are called, ill-formed, and are do not constitute mathematical expressions.
For example, in arithmetic, the expression 1 + 2 × 3 is well-formed, but
- .
is not.
However, being well-formed is not enough to be considered well-defined. For example in arithmetic, the expression is well-formed, but it is not well-defined. (See Division by zero). Such expressions are called undefined.
Well-defined
Semantics is the study of meaning. Formal semantics is about attaching meaning to expressions. An expression that defines a unique value or meaning is said to be well-defined. Otherwise, the expression is said to be ill defined or ambiguous. In general the meaning of expressions is not limited to designating values; for instance, an expression might designate a condition, or an equation that is to be solved, or it can be viewed as an object in its own right that can be manipulated according to certain rules. Certain expressions that designate a value simultaneously express a condition that is assumed to hold, for instance those involving the operator to designate an internal direct sum.
In algebra, an expression may be used to designate a value, which might depend on values assigned to variables occurring in the expression. The determination of this value depends on the semantics attached to the symbols of the expression. The choice of semantics depends on the context of the expression. The same syntactic expression 1 + 2 × 3 can have different values (mathematically 7, but also 9), depending on the order of operations implied by the context (See also Operations § Calculators).
For real numbers, the product is unambiguous because ; hence the notation is said to be well defined. This property, also known as associativity of multiplication, guarantees the result does not depend on the sequence of multiplications; therefore, a specification of the sequence can be omitted. The subtraction operation is non-associative; despite that, there is a convention that is shorthand for , thus it is considered "well-defined". On the other hand, Division is non-associative, and in the case of , parenthesization conventions are not well established; therefore, this expression is often considered ill-defined.
Unlike with functions, notational ambiguities can be overcome by means of additional definitions (e.g., rules of precedence, associativity of the operator). For example, in the programming language C, the operator -
for subtraction is left-to-right-associative, which means that a-b-c
is defined as (a-b)-c
, and the operator =
for assignment is right-to-left-associative, which means that a=b=c
is defined as a=(b=c)
. In the programming language APL there is only one rule: from right to left – but parentheses first.
Formal definition
The term 'expression' is part of the language of mathematics, that is to say, it is not defined within mathematics, but taken as a primitive part of the language. To attempt to define the term would not be doing mathematics, but rather, one would be engaging in a kind of metamathematics (the metalanguage of mathematics), usually mathematical logic. Within mathematical logic, mathematics is usually described as a kind of formal language, and a well-formed expression can be defined recursively as follows:
The alphabet consists of:
- A set of individual constants: Symbols representing fixed objects in the domain of discourse, such as numerals (1, 2.5, 1/7, ...), sets (, ...), truth values (T or F), etc.
- A set of individual variables: A countably infinite amount of symbols representing variables used for representing an unspecified object in the domain. (Usually letters like x, or y)
- A set of operations: Function symbols representing operations that can be performed on elements over the domain, like addition (+), multiplication (×), or set operations like union (∪), or intersection (∩). (Functions can be understood as unary operations)
- Brackets ( )
With this alphabet, the recursive rules for forming a well-formed expression (WFE) are as follows:
- Any constant or variable as defined are the atomic expressions, the simplest well-formed expressions (WFE's). For instance, the constant or the variable are syntactically correct expressions.
- Let be a metavariable for any n-ary operation over the domain, and let be metavariables for any WFE's.
- Then is also well-formed. For the most often used operations, more convenient notations (like infix notation) have been developed over the centuries.
- For instance, if the domain of discourse is the real numbers, can denote the binary operation +, then is well-formed. Or can be the unary operation so is well-formed.
- Brackets are initially around each non-atomic expression, but they can be deleted in cases where there is a defined order of operations, or where order doesn't matter (i.e. where operations are associative).
A well-formed expression can be thought as a syntax tree. The leaf nodes are always atomic expressions. Operations and have exactly two child nodes, while operations , and have exactly one. There are countably infinitely many WFE's, however, each WFE has a finite number of nodes.
Lambda calculus
Formal languages allow formalizing the concept of well-formed expressions.
In the 1930s, a new type of expression, the lambda expression, was introduced by Alonzo Church and Stephen Kleene for formalizing functions and their evaluation. The lambda operators (lambda abstraction and function application) form the basis for lambda calculus, a formal system used in mathematical logic and programming language theory.
The equivalence of two lambda expressions is undecidable (but see unification (computer science)). This is also the case for the expressions representing real numbers, which are built from the integers by using the arithmetical operations, the logarithm and the exponential (Richardson's theorem).
Types of expressions
Algebraic expression
An algebraic expression is an expression built up from algebraic constants, variables, and the algebraic operations (addition, subtraction, multiplication, division and exponentiation by a rational number). For example, 3x2 − 2xy + c is an algebraic expression. Since taking the square root is the same as raising to the power 1/2, the following is also an algebraic expression:
See also: Algebraic equation and Algebraic closure
Polynomial expression
A polynomial expression is an expression built with scalars (numbers of elements of some field), indeterminates, and the operators of addition, multiplication, and exponentiation to nonnegative integer powers; for example
Using associativity, commutativity and distributivity, every polynomial expression is equivalent to a polynomial, that is an expression that is a linear combination of products of integer powers of the indeterminates. For example the above polynomial expression is equivalent (denote the same polynomial as
Many author do not distinguish polynomials and polynomial expressions. In this case the expression of a polynomial expression as a linear combination is called the canonical form, normal form, or expanded form of the polynomial.
Computational expression
In computer science, an expression is a syntactic entity in a programming language that may be evaluated to determine its value or fail to terminate, in which case the expression is undefined. It is a combination of one or more constants, variables, functions, and operators that the programming language interprets (according to its particular rules of precedence and of association) and computes to produce ("to return", in a stateful environment) another value. This process, for mathematical expressions, is called evaluation. In simple settings, the resulting value is usually one of various primitive types, such as string, Boolean, or numerical (such as integer, floating-point, or complex).
In computer algebra, formulas are viewed as expressions that can be evaluated as a Boolean, depending on the values that are given to the variables occurring in the expressions. For example takes the value false if x is given a value less than 1, and the value true otherwise.
Expressions are often contrasted with statements—syntactic entities that have no value (an instruction).
Except for numbers and variables, every mathematical expression may be viewed as the symbol of an operator followed by a sequence of operands. In computer algebra software, the expressions are usually represented in this way. This representation is very flexible, and many things that seem not to be mathematical expressions at first glance, may be represented and manipulated as such. For example, an equation is an expression with "=" as an operator, a matrix may be represented as an expression with "matrix" as an operator and its rows as operands.
See: Computer algebra expression
Logical expression
In mathematical logic, a "logical expression" can refer to either terms or formulas. A term denotes a mathematical object while a formula denotes a mathematical fact. In particular, terms appear as components of a formula.
A first-order term is recursively constructed from constant symbols, variables, and function symbols. An expression formed by applying a predicate symbol to an appropriate number of terms is called an atomic formula, which evaluates to true or false in bivalent logics, given an interpretation. For example, is a term built from the constant 1, the variable x, and the binary function symbols and ; it is part of the atomic formula which evaluates to true for each real-numbered value of x.
Formal expression
A formal expression is a kind of string of symbols, created by the same production rules as standard expressions, however, they are used without regard to the meaning of the expression. In this way, two formal expressions are considered equal only if they are syntactically equal, that is, if they are the exact same expression. For instance, the formal expressions "2" and "1+1" are not equal.
See also
- Analytic expression
- Closed-form expression
- Formal calculation
- Functional programming
- Infinite expression
- Number sentence
- Rewriting
- Signature (logic)
Notes
- The study of non-computable statements is the field of hypercomputation.
- For a full history, see Cardone and Hindley's "History of Lambda-calculus and Combinatory Logic" (2006).
References
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In mathematics an expression is a written arrangement of symbols following the context dependent syntactic conventions of mathematical notation Symbols can denote numbers variables operations and functions Other symbols include punctuation marks and brackets used for grouping where there is not a well defined order of operations In the equation 7x 5 2 the sides of the equation are expressions Expressions are commonly distinguished from formulas expressions are a kind of mathematical object whereas formulas are statements about mathematical objects This is analogous to natural language where a noun phrase refers to an object and a whole sentence refers to a fact For example 8x 5 displaystyle 8x 5 is an expression while the inequality 8x 5 3 displaystyle 8x 5 geq 3 is a formula To evaluate an expression means to find a numerical value equivalent to the expression Expressions can be evaluated or simplified by replacing operations that appear in them with their result For example the expression 8 2 5 displaystyle 8 times 2 5 simplifies to 16 5 displaystyle 16 5 and evaluates to 11 displaystyle 11 An expression is often used to define a function by taking the variables to be arguments or inputs of the function and assigning the output to be the evaluation of the resulting expression For example x x2 1 displaystyle x mapsto x 2 1 and f x x2 1 displaystyle f x x 2 1 define the function that associates to each number its square plus one An expression with no variables would define a constant function Usually two expressions are considered equal or equivalent if they define the same function Such an equality is called a semantic equality that is both expressions mean the same thing HistoryEarly written mathematics The Ishango bone at the RBINS A Babylonian tablet approximating the square root of 2 Problem 14 from the Moscow Mathematical Papyrus The earliest written mathematics likely began with tally marks where each mark represented one unit carved into wood or stone An example of early counting is the Ishango bone found near the Nile and dating back over 20 000 years ago which is thought to show a six month lunar calendar Ancient Egypt developed a symbolic system using hieroglyphics assigning symbols for powers of ten and using addition and subtraction symbols resembling legs in motion This system recorded in texts like the Rhind Mathematical Papyrus c 2000 1800 BC influenced other Mediterranean cultures In Mesopotamia a similar system evolved with numbers written in a base 60 sexagesimal format on clay tablets written in Cuneiform a technique originating with the Sumerians around 3000 BC This base 60 system persists today in measuring time and angles Syncopated stage The syncopated stage of mathematics introduced symbolic abbreviations for commonly used operations and quantities marking a shift from purely geometric reasoning Ancient Greek mathematics largely geometric in nature drew on Egyptian numerical systems especially Attic numerals with little interest in algebraic symbols until the arrival of Diophantus of Alexandria who pioneered a form of syncopated algebra in his Arithmetica which introduced symbolic manipulation of expressions His notation represented unknowns and powers symbolically but without modern symbols for relations such as equality or inequality or exponents An unknown number was called z displaystyle zeta The square of z displaystyle zeta was Dv displaystyle Delta v the cube was Kv displaystyle K v the fourth power was DvD displaystyle Delta v Delta the fifth power was DKv displaystyle Delta K v and displaystyle pitchfork meant to subtract everything on the right from the left So for example what would be written in modern notation as x3 2x2 10x 1 displaystyle x 3 2x 2 10x 1 Would be written in Diophantus s syncopated notation as Kya zi Dyb Ma displaystyle mathrm K upsilon overline alpha zeta overline iota pitchfork Delta upsilon overline beta mathrm M overline alpha In the 7th century Brahmagupta used different colours to represent the unknowns in algebraic equations in the Brahmasphuṭasiddhanta Greek and other ancient mathematical advances were often trapped in cycles of bursts of creativity followed by long periods of stagnation but this began to change as knowledge spread in the early modern period Symbolic stage and early arithmetic The 1489 use of the plus and minus signs in print The transition to fully symbolic algebra began with Ibn al Banna al Marrakushi 1256 1321 and Abu al Ḥasan ibn ʿAli al Qalaṣadi 1412 1482 who introduced symbols for operations using Arabic characters The plus sign appeared around 1351 with Nicole Oresme likely derived from the Latin et meaning and while the minus sign was first used in 1489 by Johannes Widmann Luca Pacioli included these symbols in his works though much was based on earlier contributions by Piero della Francesca The radical symbol for square root was introduced by Christoph Rudolff in the 1500s and parentheses for precedence by Niccolo Tartaglia in 1556 Francois Viete s New Algebra 1591 formalized modern symbolic manipulation The multiplication sign was first used by William Oughtred and the division sign by Johann Rahn Rene Descartes further advanced algebraic symbolism in La Geometrie 1637 where he introduced the use of letters at the end of the alphabet x y z for variables along with the Cartesian coordinate system which bridged algebra and geometry Isaac Newton and Gottfried Wilhelm Leibniz independently developed calculus in the late 17th century with Leibniz s notation becoming the standard Variables and evaluationIn elementary algebra a variable in an expression is a letter that represents a number whose value may change To evaluate an expression with a variable means to find the value of the expression when the variable is assigned a given number Expressions can be evaluated or simplified by replacing operations that appear in them with their result or by combining like terms For example take the expression 4x2 8 displaystyle 4x 2 8 it can be evaluated at x 3 in the following steps 4 3 2 3 textstyle 4 3 2 3 replace x with 3 4 3 3 8 displaystyle 4 cdot 3 cdot 3 8 use definition of exponent 4 9 8 displaystyle 4 cdot 9 8 simplify 36 8 displaystyle 36 8 44 displaystyle 44 A term is a constant or the product of a constant and one or more variables Some examples include 7 5x 13x2y 4b displaystyle 7 5x 13x 2 y 4b The constant of the product is called the coefficient Terms that are either constants or have the same variables raised to the same powers are called like terms If there are like terms in an expression one can simplify the expression by combining the like terms One adds the coefficients and keeps the same variable 4x 7x 2x 15x displaystyle 4x 7x 2x 15x Any variable can be classified as being either a free variable or a bound variable For a given combination of values for the free variables an expression may be evaluated although for some combinations of values of the free variables the value of the expression may be undefined Thus an expression represents an operation over constants and free variables and whose output is the resulting value of the expression For a non formalized language that is in most mathematical texts outside of mathematical logic for an individual expression it is not always possible to identify which variables are free and bound For example in i lt kaik textstyle sum i lt k a ik depending on the context the variable i textstyle i can be free and k textstyle k bound or vice versa but they cannot both be free Determining which value is assumed to be free depends on context and semantics Equivalence An expression is often used to define a function or denote compositions of functions by taking the variables to be arguments or inputs of the function and assigning the output to be the evaluation of the resulting expression For example x x2 1 displaystyle x mapsto x 2 1 and f x x2 1 displaystyle f x x 2 1 define the function that associates to each number its square plus one An expression with no variables would define a constant function In this way two expressions are said to be equivalent if for each combination of values for the free variables they have the same output i e they represent the same function The equivalence between two expressions is called an identity and is sometimes denoted with displaystyle equiv For example in the expression n 13 2nx textstyle sum n 1 3 2nx the variable n is bound and the variable x is free This expression is equivalent to the simpler expression 12 x that is n 13 2nx 12x displaystyle sum n 1 3 2nx equiv 12x The value for x 3 is 36 which can be denoted n 13 2nx x 3 36 displaystyle sum n 1 3 2nx Big x 3 36 Polynomial evaluation A polynomial consists of variables and coefficients that involve only the operations of addition subtraction multiplication and exponentiation to nonnegative integer powers and has a finite number of terms The problem of polynomial evaluation arises frequently in practice In computational geometry polynomials are used to compute function approximations using Taylor polynomials In cryptography and hash tables polynomials are used to compute k independent hashing In the former case polynomials are evaluated using floating point arithmetic which is not exact Thus different schemes for the evaluation will in general give slightly different answers In the latter case the polynomials are usually evaluated in a finite field in which case the answers are always exact For evaluating the univariate polynomial anxn an 1xn 1 a0 textstyle a n x n a n 1 x n 1 cdots a 0 the most naive method would use n displaystyle n multiplications to compute anxn displaystyle a n x n use n 1 textstyle n 1 multiplications to compute an 1xn 1 displaystyle a n 1 x n 1 and so on for a total of n n 1 2 textstyle frac n n 1 2 multiplications and n displaystyle n additions Using better methods such as Horner s rule this can be reduced to n displaystyle n multiplications and n displaystyle n additions If some preprocessing is allowed even more savings are possible Computation A computation is any type of arithmetic or non arithmetic calculation that is well defined The notion that mathematical statements should be well defined had been argued by mathematicians since at least the 1600s but agreement on a suitable definition proved elusive A candidate definition was proposed independently by several mathematicians in the 1930s The best known variant was formalised by the mathematician Alan Turing who defined a well defined statement or calculation as any statement that could be expressed in terms of the initialisation parameters of a Turing machine page needed Turing s definition apportioned well definedness to a very large class of mathematical statements including all well formed algebraic statements and all statements written in modern computer programming languages Despite the widespread uptake of this definition there are some mathematical concepts that have no well defined characterisation under this definition This includes the halting problem and the busy beaver game It remains an open question as to whether there exists a more powerful definition of well defined that is able to capture both computable and non computable statements All statements characterised in modern programming languages are well defined including C Python and Java Common examples of computation are basic arithmetic and the execution of computer algorithms A calculation is a deliberate mathematical process that transforms one or more inputs into one or more outputs or results For example multiplying 7 by 6 is a simple algorithmic calculation Extracting the square root or the cube root of a number using mathematical models is a more complex algorithmic calculation Rewriting Expressions can be computed by means of an evaluation strategy To illustrate executing a function call f a b may first evaluate the arguments a and b store the results in references or memory locations ref a and ref b then evaluate the function s body with those references passed in This gives the function the ability to look up the original argument values passed in through dereferencing the parameters some languages use specific operators to perform this to modify them via assignment as if they were local variables and to return values via the references This is the call by reference evaluation strategy Evaluation strategy is part of the semantics of the programming language definition Some languages such as PureScript have variants with different evaluation strategies Some declarative languages such as Datalog support multiple evaluation strategies Some languages define a calling convention In rewriting a reduction strategy or rewriting strategy is a relation specifying a rewrite for each object or term compatible with a given reduction relation A rewriting strategy specifies out of all the reducible subterms redexes which one should be reduced contracted within a term One of the most common systems involves lambda calculus Well defined expressionsThe language of mathematics exhibits a kind of grammar called formal grammar about how expressions may be written There are two considerations for well definedness of mathematical expressions syntax and semantics Syntax is concerned with the rules used for constructing or transforming the symbols of an expression without regard to any interpretation or meaning given to them Expressions that are syntactically correct are called well formed Semantics is concerned with the meaning of these well formed expressions Expressions that are semantically correct are called well defined Well formed The syntax of mathematical expressions can be described somewhat informally as follows the allowed operators must have the correct number of inputs in the correct places usually written with infix notation the sub expressions that make up these inputs must be well formed themselves have a clear order of operations etc Strings of symbols that conform to the rules of syntax are called well formed and those that are not well formed are called ill formed and are do not constitute mathematical expressions For example in arithmetic the expression 1 2 3 is well formed but 4 x y displaystyle times 4 x y is not However being well formed is not enough to be considered well defined For example in arithmetic the expression 10 textstyle frac 1 0 is well formed but it is not well defined See Division by zero Such expressions are called undefined Well defined Semantics is the study of meaning Formal semantics is about attaching meaning to expressions An expression that defines a unique value or meaning is said to be well defined Otherwise the expression is said to be ill defined or ambiguous In general the meaning of expressions is not limited to designating values for instance an expression might designate a condition or an equation that is to be solved or it can be viewed as an object in its own right that can be manipulated according to certain rules Certain expressions that designate a value simultaneously express a condition that is assumed to hold for instance those involving the operator displaystyle oplus to designate an internal direct sum In algebra an expression may be used to designate a value which might depend on values assigned to variables occurring in the expression The determination of this value depends on the semantics attached to the symbols of the expression The choice of semantics depends on the context of the expression The same syntactic expression 1 2 3 can have different values mathematically 7 but also 9 depending on the order of operations implied by the context See also Operations Calculators For real numbers the product a b c displaystyle a times b times c is unambiguous because a b c a b c displaystyle a times b times c a times b times c hence the notation is said to be well defined This property also known as associativity of multiplication guarantees the result does not depend on the sequence of multiplications therefore a specification of the sequence can be omitted The subtraction operation is non associative despite that there is a convention that a b c displaystyle a b c is shorthand for a b c displaystyle a b c thus it is considered well defined On the other hand Division is non associative and in the case of a b c displaystyle a b c parenthesization conventions are not well established therefore this expression is often considered ill defined Unlike with functions notational ambiguities can be overcome by means of additional definitions e g rules of precedence associativity of the operator For example in the programming language C the operator for subtraction is left to right associative which means that a b c is defined as a b c and the operator for assignment is right to left associative which means that a b c is defined as a b c In the programming language APL there is only one rule from right to left but parentheses first Formal definitionThe term expression is part of the language of mathematics that is to say it is not defined within mathematics but taken as a primitive part of the language To attempt to define the term would not be doing mathematics but rather one would be engaging in a kind of metamathematics the metalanguage of mathematics usually mathematical logic Within mathematical logic mathematics is usually described as a kind of formal language and a well formed expression can be defined recursively as follows The alphabet consists of A set of individual constants Symbols representing fixed objects in the domain of discourse such as numerals 1 2 5 1 7 sets 1 2 3 displaystyle varnothing 1 2 3 truth values T or F etc A set of individual variables A countably infinite amount of symbols representing variables used for representing an unspecified object in the domain Usually letters like x or y A set of operations Function symbols representing operations that can be performed on elements over the domain like addition multiplication or set operations like union or intersection Functions can be understood as unary operations Brackets With this alphabet the recursive rules for forming a well formed expression WFE are as follows Any constant or variable as defined are the atomic expressions the simplest well formed expressions WFE s For instance the constant 2 displaystyle 2 or the variable x displaystyle x are syntactically correct expressions Let F displaystyle F be a metavariable for any n ary operation over the domain and let ϕ1 ϕ2 ϕn displaystyle phi 1 phi 2 phi n be metavariables for any WFE s Then F ϕ1 ϕ2 ϕn displaystyle F phi 1 phi 2 phi n is also well formed For the most often used operations more convenient notations like infix notation have been developed over the centuries For instance if the domain of discourse is the real numbers F displaystyle F can denote the binary operation then ϕ1 ϕ2 displaystyle phi 1 phi 2 is well formed Or F displaystyle F can be the unary operation displaystyle surd so ϕ1 displaystyle sqrt phi 1 is well formed Brackets are initially around each non atomic expression but they can be deleted in cases where there is a defined order of operations or where order doesn t matter i e where operations are associative A well formed expression can be thought as a syntax tree The leaf nodes are always atomic expressions Operations displaystyle and displaystyle cup have exactly two child nodes while operations x textstyle sqrt x ln x textstyle text ln x and ddx textstyle frac d dx have exactly one There are countably infinitely many WFE s however each WFE has a finite number of nodes Lambda calculus Formal languages allow formalizing the concept of well formed expressions In the 1930s a new type of expression the lambda expression was introduced by Alonzo Church and Stephen Kleene for formalizing functions and their evaluation The lambda operators lambda abstraction and function application form the basis for lambda calculus a formal system used in mathematical logic and programming language theory The equivalence of two lambda expressions is undecidable but see unification computer science This is also the case for the expressions representing real numbers which are built from the integers by using the arithmetical operations the logarithm and the exponential Richardson s theorem Types of expressionsAlgebraic expression An algebraic expression is an expression built up from algebraic constants variables and the algebraic operations addition subtraction multiplication division and exponentiation by a rational number For example 3x2 2xy c is an algebraic expression Since taking the square root is the same as raising to the power 1 2 the following is also an algebraic expression 1 x21 x2 displaystyle sqrt frac 1 x 2 1 x 2 See also Algebraic equation and Algebraic closure Polynomial expression A polynomial expression is an expression built with scalars numbers of elements of some field indeterminates and the operators of addition multiplication and exponentiation to nonnegative integer powers for example 3 x 1 2 xy displaystyle 3 x 1 2 xy Using associativity commutativity and distributivity every polynomial expression is equivalent to a polynomial that is an expression that is a linear combination of products of integer powers of the indeterminates For example the above polynomial expression is equivalent denote the same polynomial as 3x2 xy 6x 3 displaystyle 3x 2 xy 6x 3 Many author do not distinguish polynomials and polynomial expressions In this case the expression of a polynomial expression as a linear combination is called the canonical form normal form or expanded form of the polynomial Computational expression In computer science an expression is a syntactic entity in a programming language that may be evaluated to determine its value or fail to terminate in which case the expression is undefined It is a combination of one or more constants variables functions and operators that the programming language interprets according to its particular rules of precedence and of association and computes to produce to return in a stateful environment another value This process for mathematical expressions is called evaluation In simple settings the resulting value is usually one of various primitive types such as string Boolean or numerical such as integer floating point or complex In computer algebra formulas are viewed as expressions that can be evaluated as a Boolean depending on the values that are given to the variables occurring in the expressions For example 8x 5 3 displaystyle 8x 5 geq 3 takes the value false if x is given a value less than 1 and the value true otherwise Expressions are often contrasted with statements syntactic entities that have no value an instruction Representation of the expression 8 6 3 1 as a Lisp tree from a 1985 Master s Thesis Except for numbers and variables every mathematical expression may be viewed as the symbol of an operator followed by a sequence of operands In computer algebra software the expressions are usually represented in this way This representation is very flexible and many things that seem not to be mathematical expressions at first glance may be represented and manipulated as such For example an equation is an expression with as an operator a matrix may be represented as an expression with matrix as an operator and its rows as operands See Computer algebra expression Logical expression In mathematical logic a logical expression can refer to either terms or formulas A term denotes a mathematical object while a formula denotes a mathematical fact In particular terms appear as components of a formula A first order term is recursively constructed from constant symbols variables and function symbols An expression formed by applying a predicate symbol to an appropriate number of terms is called an atomic formula which evaluates to true or false in bivalent logics given an interpretation For example x 1 x 1 displaystyle x 1 x 1 is a term built from the constant 1 the variable x and the binary function symbols displaystyle and displaystyle it is part of the atomic formula x 1 x 1 0 displaystyle x 1 x 1 geq 0 which evaluates to true for each real numbered value of x Formal expression A formal expression is a kind of string of symbols created by the same production rules as standard expressions however they are used without regard to the meaning of the expression In this way two formal expressions are considered equal only if they are syntactically equal that is if they are the exact same expression For instance the formal expressions 2 and 1 1 are not equal See alsoAnalytic expression Closed form expression Formal calculation Functional programming Infinite expression Number sentence Rewriting Signature logic NotesThe study of non computable statements is the field of hypercomputation For a full history see Cardone and Hindley s History of Lambda calculus and Combinatory Logic 2006 ReferencesOxford English Dictionary s v Expression n sense II 7 A group of symbols which together represent a numeric algebraic or other mathematical quantity or function Stoll Robert R 1963 Set Theory and Logic San Francisco CA Dover Publications ISBN 978 0 486 63829 4 Oxford English Dictionary s v Evaluate v sense a Mathematics To work out the value of a quantitative expression to find a numerical expression for any quantitative fact or relation Oxford English Dictionary s v Simplify v sense 4 a To express an equation or other mathematical expression in a form that is easier to understand analyse or work with e g by collecting like terms or substituting variables Codd Edgar Frank June 1970 A Relational Model of Data for Large Shared Data Banks PDF Communications of the ACM 13 6 377 387 doi 10 1145 362384 362685 S2CID 207549016 Archived PDF from the original on 2004 09 08 Retrieved 2020 04 29 Marshack Alexander 1991 The Roots of Civilization Colonial Hill Mount Kisco NY Encyclopaedia Americana By Thomas Gamaliel Bradford Pg 314 Mathematical Excursion Enhanced Edition Enhanced Webassign Edition By Richard N Aufmann Joanne Lockwood Richard D Nation Daniel K Cleg Pg 186 Mathematics and Measurement By Oswald Ashton Wentworth Dilk Pg 14 Diophantine Equations Submitted by Aaron Zerhusen Chris Rakes amp Shasta Meece MA 330 002 Dr Carl Eberhart 16 February 1999 Boyer 1991 Revival and Decline of Greek Mathematics pp 180 182 In this respect it can be compared with the great classics of the earlier Alexandrian Age yet it has practically nothing in common with these or in fact with any traditional Greek mathematics It represents essentially a new branch and makes use of a different approach Being divorced from geometric methods it resembles Babylonian algebra to a large extent But whereas Babylonian mathematicians had been concerned primarily with approximate solutions of determinate equations as far as the third degree the Arithmetica of Diophantus such as we have it is almost entirely devoted to the exact solution of equations both determinate and indeterminate Throughout the six surviving books of Arithmetica there is a systematic use of abbreviations for powers of numbers and for relationships and operations An unknown number is represented by a symbol resembling the Greek letter z displaystyle zeta perhaps for the last letter of arithmos It is instead a collection of some 150 problems all worked out in terms of specific numerical examples although perhaps generality of method was intended There is no postulation development nor is an effort made to find all possible solutions In the case of quadratic equations with two positive roots only the larger is give and negative roots are not recognized No clear cut distinction is made between determinate and indeterminate problems and even for the latter for which the number of solutions generally is unlimited only a single answer is given Diophantus solved problems involving several unknown numbers by skillfully expressing all unknown quantities where possible in terms of only one of them Boyer 1991 Revival and Decline of Greek Mathematics p 178 The chief difference between Diophantine syncopation and the modern algebraic notation is the lack of special symbols for operations and relations as well as of the exponential notation A History of Greek Mathematics From Aristarchus to Diophantus By Sir Thomas Little Heath Pg 456 A History of Greek Mathematics From Aristarchus to Diophantus By Sir Thomas Little Heath Pg 458 O Connor John J Robertson Edmund F al Marrakushi ibn Al Banna MacTutor History of Mathematics Archive University of St Andrews Gullberg Jan 1997 Mathematics From the Birth of Numbers W W Norton p 298 ISBN 0 393 04002 X O Connor John J Robertson Edmund F Abu l Hasan ibn Ali al Qalasadi MacTutor History of Mathematics Archive University of St Andrews Der Algorismus proportionum des Nicolaus Oresme Zum ersten Male nach der Lesart der Handschrift R 40 2 der Koniglichen Gymnasial bibliothek zu Thorn Nicole Oresme S Calvary amp Company 1868 Later early modern version A New System of Mercantile Arithmetic Adapted to the Commerce of the United States in Its Domestic and Foreign Relations with Forms of Accounts and Other Writings Usually Occurring in Trade By Edmund M Blunt proprietor 1801 Descartes 2006 p 1xiii This short work marks the moment at which algebra and geometry ceased being separate Marecek Lynn Mathis Andrea Honeycutt 2020 05 06 1 1 Use the Language of Algebra Intermediate Algebra 2e OpenStax openstax org Retrieved 2024 10 14 C C Chang H Jerome Keisler 1977 Model Theory Studies in Logic and the Foundation of Mathematics Vol 73 North Holland here Sect 1 3 Sobolev S K originator Free variable Encyclopedia of Mathematics Springer ISBN 1402006098 Codd Edgar Frank June 1970 A Relational Model of Data for Large Shared Data Banks PDF Communications of the ACM 13 6 377 387 doi 10 1145 362384 362685 S2CID 207549016 Archived PDF from the original on 2004 09 08 Retrieved 2020 04 29 Equation Encyclopedia of Mathematics URL http encyclopediaofmath org index php title Equation amp oldid 32613 Pratt Vaughan Algebra The Stanford Encyclopedia of Philosophy Winter 2022 Edition Edward N Zalta amp Uri Nodelman eds URL https plato stanford edu entries algebra Laws Definition of COMPUTATION www merriam webster com 2024 10 11 Retrieved 2024 10 12 Couturat Louis 1901 la Logique de Leibniz a Apres des Documents Inedits Paris ISBN 978 0343895099 Davis Martin Davis Martin D 2000 The Universal Computer W W Norton amp Company ISBN 978 0 393 04785 1 Davis Martin 1982 01 01 Computability amp Unsolvability Courier Corporation ISBN 978 0 486 61471 7 Turing A M 1937 Delivered to the Society November 1936 On Computable Numbers with an Application to the Entscheidungsproblem PDF Proceedings of the London Mathematical Society 2 Vol 42 pp 230 65 doi 10 1112 plms s2 42 1 230 Davis Martin Davis Martin D 2000 The Universal Computer W W Norton amp Company ISBN 978 0 393 04785 1 Davis Martin 2006 Why there is no such discipline as hypercomputation Applied Mathematics and Computation 178 1 4 7 doi 10 1016 j amc 2005 09 066 Araki Shota Nishizaki Shin ya November 2014 Call by name evaluation of RPC and RMI calculi Theory and Practice of Computation p 1 doi 10 1142 9789814612883 0001 ISBN 978 981 4612 87 6 Retrieved 2021 08 21 Daniel P Friedman Mitchell Wand 2008 Essentials of Programming Languages third ed Cambridge MA The MIT Press ISBN 978 0262062794 Stoll Robert R 1963 Set Theory and Logic San Francisco CA Dover Publications ISBN 978 0 486 63829 4 Weisstein Eric W Well Defined From MathWorld A Wolfram Web Resource Retrieved 2013 01 02 Operator Precedence and Associativity in C GeeksforGeeks 2014 02 07 Retrieved 2019 10 18 Hermes Hans 1973 Introduction to Mathematical Logic Springer London ISBN 3540058192 ISSN 1431 4657 here Sect II 1 3 Church Alonzo 1932 A set of postulates for the foundation of logic Annals of Mathematics Series 2 33 2 346 366 doi 10 2307 1968337 JSTOR 1968337 Morris Christopher G 1992 Academic Press dictionary of science and technology Gulf Professional Publishing p 74 algebraic expression over a field Mitchell J 2002 Concepts in Programming Languages Cambridge Cambridge University Press 3 4 1 Statements and Expressions p 26 Maurizio Gabbrielli Simone Martini 2010 Programming Languages Principles and Paradigms Springer London 6 1 Expressions p 120 Cassidy Kevin G Dec 1985 The Feasibility of Automatic Storage Reclamation with Concurrent Program Execution in a LISP Environment PDF Master s thesis Naval Postgraduate School Monterey CA p 15 ADA165184 McCoy Neal H 1960 Introduction To Modern Algebra Boston Allyn amp Bacon p 127 LCCN 68015225 Fraleigh John B 2003 A first course in abstract algebra Boston Addison Wesley ISBN 978 0 201 76390 4 Works CitedDescartes Rene 2006 1637 A discourse on the method of correctly conducting one s reason and seeking truth in the sciences Translated by Ian Maclean Oxford University Press ISBN 0 19 282514 3