In mathematics, a function space is a set of functions between two fixed sets. Often, the domain and/or codomain will have additional structure which is inherited by the function space. For example, the set of functions from any set into a vector space has a natural vector space structure given by pointwise addition and scalar multiplication. In other scenarios, the function space might inherit a topological or Metric space structure, hence the name function space.
In linear algebra
Let be a field and let be any set. The functions → can be given the structure of a vector space over where the operations are defined pointwise, that is, for any , : → , any in , and any in , define
When the domain has additional structure, one might consider instead the
subset (or
Linear subspace) of all such functions which respect that structure. For example, if and also itself are vector spaces over , the set of
Linear map → form a vector space over with pointwise operations (often denoted
Hom set(,)). One such space is the
dual space of : the set of
Linear form → with addition and scalar multiplication defined pointwise.
The cardinal dimension of a function space with no extra structure can be found by the Erdős–Kaplansky theorem.
Examples
Function spaces appear in various areas of mathematics:
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In set theory, the set of functions from X to Y may be denoted { X → Y} or Y X.
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As a special case, the power set of a set X may be identified with the set of all functions from X to {0, 1}, denoted 2 X.
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The set of from X to Y is denoted . The factorial notation X! may be used for permutations of a single set X.
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In functional analysis, the same is seen for continuous linear transformations, including topologies on the vector spaces in the above, and many of the major examples are function spaces carrying a topology; the best known examples include and .
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In functional analysis, the set of all functions from the to some set X is called a sequence space. It consists of the set of all possible sequences of elements of X.
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In topology, one may attempt to put a topology on the space of continuous functions from a topological space X to another one Y, with utility depending on the nature of the spaces. A commonly used example is the compact-open topology, e.g. loop space. Also available is the product topology on the space of set theoretic functions (i.e. not necessarily continuous functions) Y X. In this context, this topology is also referred to as the topology of pointwise convergence.
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In algebraic topology, the study of homotopy theory is essentially that of discrete invariants of function spaces;
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In the theory of stochastic processes, the basic technical problem is how to construct a probability measure on a function space of paths of the process (functions of time);
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In category theory, the function space is called an exponential object or map object. It appears in one way as the representation canonical bifunctor; but as (single) functor, of type , it appears as an adjoint functor to a functor of type on objects;
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In functional programming and lambda calculus, are used to express the idea of higher-order functions
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In programming more generally, many higher-order function concepts occur with or without explicit typing, such as closures.
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In domain theory, the basic idea is to find constructions from that can model lambda calculus, by creating a well-behaved Cartesian closed category.
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In the representation theory of finite groups, given two finite-dimensional representations and of a group , one can form a representation of over the vector space of linear maps Hom(,) called the Hom representation.
Functional analysis
Functional analysis is organized around adequate techniques to bring function spaces as topological vector spaces within reach of the ideas that would apply to
of finite dimension. Here we use the real line as an example domain, but the spaces below exist on suitable open subsets
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continuous functions endowed with the uniform norm topology
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continuous functions with compact support
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continuous functions which vanish at infinity
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continuous functions that have r continuous derivatives.
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smooth functions
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smooth functions with compact support (i.e. the set of )
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real analytic functions
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, for , is the Lp space of measurable functions whose p-norm is finite
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, the Schwartz space of rapidly decreasing smooth functions and its continuous dual, tempered distributions
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compact support in limit topology
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Sobolev space of functions whose weak derivatives up to order k are in
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holomorphic functions
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linear functions
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piecewise linear functions
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continuous functions, compact open topology
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all functions, space of pointwise convergence
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Hardy space
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Hölder space
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Càdlàg functions, also known as the Skorokhod space
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, the space of all Lipschitz functions on that vanish at zero.
Uniform norm
If is an element of the function space
of all continuous functions that are defined on a
closed interval , the
norm defined on
is the maximum
absolute value of for ,
is called the uniform norm or supremum norm ('sup norm').
Bibliography
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Kolmogorov, A. N., & Fomin, S. V. (1967). Elements of the theory of functions and functional analysis. Courier Dover Publications.
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Stein, Elias; Shakarchi, R. (2011). Functional Analysis: An Introduction to Further Topics in Analysis. Princeton University Press.
See also