INDICATOR FUNCTION

In mathematics, an 'indicator function' or a 'characteristic function' is a function defined on a set X that indicates membership of an element in a subset A of X.
The indicator function of a subset A of a set X is a function
:mathbf{1}_A : X o lbrace 0,1
brace ,
defined as
:mathbf{1}_A(x) =
left{egin{matrix}
1 &mbox{if} x in A, \
0 &mbox{if} x
otin A.
end{matrix}
ight.

The Iverson bracket allows the notation [x in A].
The indicator function of A is sometimes denoted
:chi_A(x) or mathbf{I}_A(x) or even A(x).
(The Greek letter χ because it is the initial letter of the Greek etymon of the word ''characteristic''.)

Contents
Warnings
Basic properties
Characteristic function in recursion theory, Gödel's and Kleene's ''representing function''
Characteristic function in fuzzy set theory
See also
References

Warnings



★ The notation mathbf{1}_A may signify the identity function.

★ The notation chi_{A} may signify the characteristic function in convex analysis.
A related concept in statistics is that of a dummy variable (this must not be confused with "dummy variables" as that term is usually used in mathematics, also called a bound variable).
The term "characteristic function" has an unrelated meaning in probability theory. For this reason, probabilists use the term 'indicator function' for the function defined here almost exclusively, while mathematicians in other fields are more likely to use the term 'characteristic function' to describe the function which indicates membership in a set.

Basic properties


Boolos, Burgess, and Jeffrey (2002) define the ''characteristic function'' as follows:
:"The ''characteristic function'' of a k-place relation is the k-argument function that takes the value 1 for a k-tuple if the relation holds of the k-tuple, and the value 0 if it does not; and a relation is ''effectively decidable'' if its characteristic function is effectively computable, and is ''(primitive) recursive'' if its characteristic function is (primitive) recursive." (italics in original, p.73–74)
The mapping which associates a subset A of X to its ''indicator function'' mathbf{1}_A is injective; its range is the set of functions f : X o {0,1}.
In the following, the "dot" is a sign that represents algebraic multiplication i.e. 1
★ 1 = 1, 1
★ 0 = 0 etc, and likewise the "+" and "-" represent algebraic addition and subtraction. If A and B are two subsets of X, then
:mathbf{1}_{Acap B} = min{mathbf{1}_A,mathbf{1}_B} = mathbf{1}_A cdotmathbf{1}_B,,
:mathbf{1}_{Acup B} = max{{mathbf{1}_A,mathbf{1}_B}} = mathbf{1}_A + mathbf{1}_B - mathbf{1}_A cdotmathbf{1}_B,
:mathbf{1}_{A riangle B} = mathbf{1}_A + mathbf{1}_B - 2cdotmathbf{1}_A cdotmathbf{1}_B,
and the "complement" of the indicator function of A i.e. AC is:
:mathbf{1}_{A^complement} = 1-mathbf{1}_A.
If the functions A, B and C are Boolean in nature, i.e. they only take on values { 0, 1 } and evaluate to only { 0, 1 } then their indicator functions also evaluate to { 0, 1 }, and the above four formulas represent the logical AND, inclusive-OR, exclusive-OR, and NOT (i.e. logical inverse), respectively.
More generally, suppose A_1, ldots, A_n is a collection of subsets of X. For any
x in X,
: prod_{k in I} ( 1 - mathbf{1}_{A_k}(x))
is clearly a product of 0s and 1s. This product has the value 1 at
precisely those x in X which belong to none of the sets A_k and
is 0 otherwise. That is
: prod_{k in I} ( 1 - mathbf{1}_{A_k}) = mathbf{1}_{X - igcup_{k} A_k} = 1 - mathbf{1}_{igcup_{k} A_k}.
Expanding the product on the left hand side,
: mathbf{1}_{igcup_{k} A_k}= 1 - sum_{F subseteq {1, 2, ldots, n}} (-1)^
mathbf{1}_{igcap_F A_k} = sum_{emptyset
eq F subseteq {1, 2, ldots, n}} (-1)^{|F|+1} mathbf{1}_{igcap_F A_k}
where |F| is the cardinality of F. This is one form of the principle of inclusion-exclusion.
As suggested by the previous example, the indicator function is a useful notational device in combinatorics. The notation is used in other places as well, for instance in probability theory: if X is a probability space with probability measure mathbb{P} and A is a measurable set, then mathbf{1}_A becomes a random variable whose expected value is equal to the probability of A:
:E(mathbf{1}_A)= int_{X} mathbf{1}_A(x),dP = int_{A} dP = P(A).quad
This identity is used in a simple proof of Markov's inequality.
In many cases, such as order theory, the inverse of the indicator function may be defined. This is commonly called the generalized Möbius function, as a generalization of the inverse of the indicator function in elementary number theory, the Möbius function. (See paragraph below about the use of the inverse in classical recursion theory.)

Characteristic function in recursion theory, Gödel's and Kleene's ''representing function''


Kurt Gödel described the ''representing function'' in his 1934 paper "On Undecidable Propositions of Formal Mathematical Systems". (The paper appears on pp. 41-74 in Martin Davis ed. ''The Undecidable''):
:"There shall correspond to each class or relation R a representing function φ(x1, . . ., xn) = 0 if R(x1, . . ., xn) and φ(x1, . . ., xn)=1 if ~R(x1, . . ., xn)." (p. 42; the "~" indicates logical inversion i.e. "NOT")
Stephen Kleene (1952) (p. 227) offers up the same definition in the context of the primitive recursive functions as a function φ of a predicate P, takes on values 0 if the predicate is true and 1 if the predicate is false.
For example, because the product of characteristic functions φ1
★ φ2
★ . . .
★ φn = 0 whenever any one of the functions equals 0, it plays the role of logical OR: IF φ1=0 OR φ2=0 OR . . . OR φn=0 THEN their product is 0. What appears to the modern reader as the representing function's logical-inversion, i.e. the representing function is 0 when the function R is "true" or satisfied", plays a useful role in Kleene's definition of the logical functions OR, AND, and IMPLY (p. 228), the bounded- (p. 228) and unbounded- (p. 279ff) mu operators (Kleene (1952)) and the CASE function (p. 229).

Characteristic function in fuzzy set theory


In classical mathematics, characteristic functions of sets only take values 1 (members) or 0 (non-members). In fuzzy set theory, characteristic functions are generalized to take value in the real unit interval [0, 1], or more generally, in some algebra or structure (usually required to be at least a poset or lattice). Such generalized characteristic functions are more usually called membership functions, and the corresponding "sets" are called ''fuzzy'' sets. Fuzzy sets model the gradual change in the membership degree seen in many real-world predicates like "tall", "warm", etc.

See also



Free variables and bound variables

Simple function

Multiset

Membership function

References



★ Folland, G.B.; ''Real Analysis: Modern Techniques and Their Applications'', 2nd ed, John Wiley & Sons, Inc., 1999.

Thomas H. Cormen, Charles E. Leiserson, Ronald L. Rivest, and Clifford Stein. ''Introduction to Algorithms'', Second Edition. MIT Press and McGraw-Hill, 2001. ISBN 0-262-03293-7. Section 5.2: Indicator random variables, pp.94–99.

Martin Davis ed. (1965), ''The Undecidable'', Raven Press Books, Ltd., New York.

Stephen Kleene, (1952), ''Introduction to Metamathematics'', Wolters-Noordhoff Publishing and North Holland Publishing Company, Netherlands, Sixth Reprint with corrections 1971.

George Boolos, John P. Burgess, Richard C. Jeffrey (2002), Cambridge University Press, Cambridge UK, ISBN 0-521-00758-5.

Lotfi A. Zadeh, 1965, "Fuzzy sets". ''Information and Control'' '8': 338–353. [1]

Joseph Goguen, 1967, "''L''-fuzzy sets". ''Journal of Mathematical Analysis and Applications'' '18': 145–174

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