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mathematics Mathematics is an area of knowledge that includes the topics of numbers, formulas and related structures, shapes and the spaces in which they are contained, and quantities and their changes. These topics are represented in modern mathematics ...
, any
vector space In mathematics and physics, a vector space (also called a linear space) is a set whose elements, often called '' vectors'', may be added together and multiplied ("scaled") by numbers called ''scalars''. Scalars are often real numbers, but can ...
''V'' has a corresponding dual vector space (or just dual space for short) consisting of all linear forms on ''V'', together with the vector space structure of
pointwise In mathematics, the qualifier pointwise is used to indicate that a certain property is defined by considering each value f(x) of some function f. An important class of pointwise concepts are the ''pointwise operations'', that is, operations defined ...
addition and scalar multiplication by constants. The dual space as defined above is defined for all vector spaces, and to avoid ambiguity may also be called the . When defined for a topological vector space, there is a subspace of the dual space, corresponding to continuous linear functionals, called the ''continuous dual space''. Dual vector spaces find application in many branches of mathematics that use vector spaces, such as in
tensor In mathematics, a tensor is an algebraic object that describes a multilinear relationship between sets of algebraic objects related to a vector space. Tensors may map between different objects such as vectors, scalars, and even other tensor ...
analysis with
finite-dimensional In mathematics, the dimension of a vector space ''V'' is the cardinality (i.e., the number of vectors) of a basis of ''V'' over its base field. p. 44, §2.36 It is sometimes called Hamel dimension (after Georg Hamel) or algebraic dimension to d ...
vector spaces. When applied to vector spaces of functions (which are typically infinite-dimensional), dual spaces are used to describe measures, distributions, and Hilbert spaces. Consequently, the dual space is an important concept in
functional analysis Functional analysis is a branch of mathematical analysis, the core of which is formed by the study of vector spaces endowed with some kind of limit-related structure (e.g. inner product, norm, topology, etc.) and the linear functions defi ...
. Early terms for ''dual'' include ''polarer Raum''
ahn 1927 Ahn or AHN may refer to: People * Ahn (Korean surname), a Korean family name occasionally Romanized as ''An'' * Ahn Byeong-keun (born 1962, ), South Korean judoka * Ahn Eak-tai (1906–1965, ), Korean composer and conductor * Ahn Jung-hwan (born ...
''espace conjugué'', ''adjoint space'' laoglu 1940 and ''transponierter Raum'' chauder 1930and anach 1932 The term ''dual'' is due to Bourbaki 1938.


Algebraic dual space

Given any
vector space In mathematics and physics, a vector space (also called a linear space) is a set whose elements, often called '' vectors'', may be added together and multiplied ("scaled") by numbers called ''scalars''. Scalars are often real numbers, but can ...
V over a field F, the (algebraic) dual space V^ (alternatively denoted by V^ p. 19, §3.1 or V')For V^ used in this way, see '' An Introduction to Manifolds'' (). This notation is sometimes used when (\cdot)^* is reserved for some other meaning. For instance, in the above text, F^* is frequently used to denote the codifferential of ''F'', so that F^* \omega represents the pullback of the form \omega. uses V' to denote the algebraic dual of ''V''. However, other authors use V' for the continuous dual, while reserving V^* for the algebraic dual (). is defined as the set of all
linear map In mathematics, and more specifically in linear algebra, a linear map (also called a linear mapping, linear transformation, vector space homomorphism, or in some contexts linear function) is a mapping V \to W between two vector spaces that ...
s ''\varphi: V \to F'' ( linear functionals). Since linear maps are vector space
homomorphism In algebra, a homomorphism is a morphism, structure-preserving map (mathematics), map between two algebraic structures of the same type (such as two group (mathematics), groups, two ring (mathematics), rings, or two vector spaces). The word ''homo ...
s, the dual space may be denoted \hom (V, F). p. 19, §3.1 The dual space V^* itself becomes a vector space over ''F'' when equipped with an addition and scalar multiplication satisfying: : \begin (\varphi + \psi)(x) &= \varphi(x) + \psi(x) \\ (a \varphi)(x) &= a \left(\varphi(x)\right) \end for all \varphi, \psi \in V^*, ''x \in V'', and a \in F. Elements of the algebraic dual space V^* are sometimes called covectors or one-forms. The pairing of a functional ''\varphi'' in the dual space V^* and an element ''x'' of ''V'' is sometimes denoted by a bracket: ''\varphi (x) = , \varphi/math>'' or ''\varphi (x) = \langle x, \varphi \rangle''. This pairing defines a nondegenerate bilinear mappingIn many areas, such as
quantum mechanics Quantum mechanics is a fundamental theory in physics that provides a description of the physical properties of nature at the scale of atoms and subatomic particles. It is the foundation of all quantum physics including quantum chemistry, ...
, is reserved for a sesquilinear form defined on . \langle \cdot, \cdot \rangle : V \times V^* \to F called the
natural pairing In mathematics, a dual system, dual pair, or duality over a field \mathbb is a triple (X, Y, b) consisting of two vector spaces X and Y over \mathbb and a non- degenerate bilinear map b : X \times Y \to \mathbb. Duality theory, the study of dua ...
.


Finite-dimensional case

If ''V'' is finite-dimensional, then ''V''∗ has the same dimension as ''V''. Given a basis in ''V'', it is possible to construct a specific basis in ''V''∗, called the dual basis. This dual basis is a set of linear functionals on ''V'', defined by the relation : \mathbf^i(c^1 \mathbf_1+\cdots+c^n\mathbf_n) = c^i, \quad i=1,\ldots,n for any choice of coefficients . In particular, letting in turn each one of those coefficients be equal to one and the other coefficients zero, gives the system of equations : \mathbf^i(\mathbf_j) = \delta^_ where \delta^_ is the Kronecker delta symbol. This property is referred to as ''bi-orthogonality property''. Consider the basis of V. Let be defined as the following: \mathbf^i(c^1 \mathbf_1+\cdots+c^n\mathbf_n) = c^i, \quad i=1,\ldots,n . We have: # e^i , i=1, 2, \dots, n, are linear functionals. Indeed, for x,y \in V such as x= \alpha_1e_1 + \dots + \alpha_ne_n and y = \beta_1e_1 + \dots + \beta_n e_n (i.e, e^i(x)=\alpha_i and e^i(y)=\beta_i). Then, x+\lambda y=(\alpha_1+\lambda \beta_1)e_1 + \dots + (\alpha_n+\lambda\beta_n)e_n and e^i(x+\lambda y)=\alpha_i+\lambda\beta_i=e^i(x)+\lambda e^i(y) . Therefore, e^i \in V^* for i= 1, 2, \dots, n . # Suppose \lambda_1 e^1 + \cdots + \lambda_n e^n =0 \in V^*. Applying this functional on the basis vectors of V successively, lead us to \lambda_1=\lambda_2= \dots=\lambda_n=0 (The functional applied in e_i results in \lambda_i ). Therefore, is l.i. on V^* . #Lastly, consider g \in V^* . Then : g(x)=g(\alpha_1e_1 + \dots + \alpha_ne_n)=\alpha_1g(e_1) + \dots + \alpha_ng(e_n)=e^1(x)g(e_1) + \dots + e^n(x)g(e_n) and generates V^*. Hence, it is the basis of V^*. For example, if ''V'' is R2, let its basis be chosen as . The basis vectors are not orthogonal to each other. Then, e1 and e2 are one-forms (functions that map a vector to a scalar) such that , , , and . (Note: The superscript here is the index, not an exponent.) This system of equations can be expressed using matrix notation as : \begin e_ & e_ \\ e_ & e_ \end \begin e^ & e^ \\ e^ & e^ \end = \begin 1 & 0 \\ 0 & 1 \end. Solving this equation shows the dual basis to be . Because e1 and e2 are functionals, they can be rewritten as e1(''x'', ''y'') = 2''x'' and e2(''x'', ''y'') = −''x'' + ''y''. In general, when ''V'' is R''n'', if E = (e1, ..., e''n'') is a matrix whose columns are the basis vectors and Ê = (e1, ..., e''n'') is a matrix whose columns are the dual basis vectors, then :E^T \hat = I_n, where ''I''''n'' is an identity matrix of order . The biorthogonality property of these two basis sets allows any point x ∈ ''V'' to be represented as :\mathbf = \sum_i \langle\mathbf,\mathbf^i \rangle \mathbf_i = \sum_i \langle \mathbf, \mathbf_i \rangle \mathbf^i, even when the basis vectors are not orthogonal to each other. Strictly speaking, the above statement only makes sense once the inner product \langle \cdot, \cdot \rangle and the corresponding duality pairing are introduced, as described below in '. In particular, R''n'' can be interpreted as the space of columns of
real number In mathematics, a real number is a number that can be used to measure a ''continuous'' one-dimensional quantity such as a distance, duration or temperature. Here, ''continuous'' means that values can have arbitrarily small variations. Every ...
s, its dual space is typically written as the space of ''rows'' of real numbers. Such a row acts on R''n'' as a linear functional by ordinary matrix multiplication. This is because a functional maps every -vector ''x'' into a real number ''y''. Then, seeing this functional as a matrix ''M'', and ''x'', ''y'' as a matrix and a matrix (trivially, a real number) respectively, if then, by dimension reasons, ''M'' must be a matrix; that is, ''M'' must be a row vector. If ''V'' consists of the space of geometrical vectors in the plane, then the level curves of an element of ''V''∗ form a family of parallel lines in ''V'', because the range is 1-dimensional, so that every point in the range is a multiple of any one nonzero element. So an element of ''V''∗ can be intuitively thought of as a particular family of parallel lines covering the plane. To compute the value of a functional on a given vector, it suffices to determine which of the lines the vector lies on. Informally, this "counts" how many lines the vector crosses. More generally, if ''V'' is a vector space of any dimension, then the level sets of a linear functional in ''V''∗ are parallel hyperplanes in ''V'', and the action of a linear functional on a vector can be visualized in terms of these hyperplanes.


Infinite-dimensional case

If ''V'' is not finite-dimensional but has a basisSeveral assertions in this article require the
axiom of choice In mathematics, the axiom of choice, or AC, is an axiom of set theory equivalent to the statement that ''a Cartesian product of a collection of non-empty sets is non-empty''. Informally put, the axiom of choice says that given any collection ...
for their justification. The axiom of choice is needed to show that an arbitrary vector space has a basis: in particular it is needed to show that RN has a basis. It is also needed to show that the dual of an infinite-dimensional vector space ''V'' is nonzero, and hence that the natural map from ''V'' to its double dual is injective.
e''α'' indexed by an infinite set ''A'', then the same construction as in the finite-dimensional case yields linearly independent elements e''α'' () of the dual space, but they will not form a basis. For instance, the space R∞, whose elements are those
sequence In mathematics, a sequence is an enumerated collection of objects in which repetitions are allowed and order matters. Like a set, it contains members (also called ''elements'', or ''terms''). The number of elements (possibly infinite) is called ...
s of real numbers that contain only finitely many non-zero entries, which has a basis indexed by the natural numbers N: for , e''i'' is the sequence consisting of all zeroes except in the ''i''-th position, which is ''1''. The dual space of R∞ is (isomorphic to) RN, the space of ''all'' sequences of real numbers: each real sequence (''an'') defines a function where the element (''xn'') of R∞ is sent to the number :\sum_n a_nx_n, which is a finite sum because there are only finitely many nonzero ''xn''. The
dimension In physics and mathematics, the dimension of a mathematical space (or object) is informally defined as the minimum number of coordinates needed to specify any point within it. Thus, a line has a dimension of one (1D) because only one coord ...
of R∞ is countably infinite, whereas RN does not have a countable basis. This observation generalizes to any infinite-dimensional vector space ''V'' over any field ''F'': a choice of basis identifies ''V'' with the space (''FA'')0 of functions such that is nonzero for only finitely many , where such a function ''f'' is identified with the vector :\sum_ f_\alpha\mathbf_\alpha in ''V'' (the sum is finite by the assumption on ''f'', and any may be written in this way by the definition of the basis). The dual space of ''V'' may then be identified with the space ''FA'' of ''all'' functions from ''A'' to ''F'': a linear functional ''T'' on ''V'' is uniquely determined by the values it takes on the basis of ''V'', and any function (with ) defines a linear functional ''T'' on ''V'' by :T\left (\sum_ f_\alpha \mathbf_\alpha\right) = \sum_ f_\alpha T(e_\alpha) = \sum_ f_\alpha \theta_\alpha. Again the sum is finite because ''fα'' is nonzero for only finitely many ''α''. The set (''F''''A'')0 may be identified (essentially by definition) with the direct sum of infinitely many copies of ''F'' (viewed as a 1-dimensional vector space over itself) indexed by ''A'', i.e. there are linear isomorphisms : V\cong (F^A)_0\cong\bigoplus_ F. On the other hand, ''FA'' is (again by definition), the
direct product In mathematics, one can often define a direct product of objects already known, giving a new one. This generalizes the Cartesian product of the underlying sets, together with a suitably defined structure on the product set. More abstractly, one t ...
of infinitely many copies of ''F'' indexed by ''A'', and so the identification :V^* \cong \left (\bigoplus_F\right )^* \cong \prod_F^* \cong \prod_F \cong F^A is a special case of a general result relating direct sums (of modules) to direct products. Considering cardinal numbers, denoted here as absolute values, one has thus for a -vector space that has an infinite basis :, V, =\max(, F, , , A, ) < , V^\ast, =, F, ^. It follows that, if a vector space is not finite-dimensional, then the
axiom of choice In mathematics, the axiom of choice, or AC, is an axiom of set theory equivalent to the statement that ''a Cartesian product of a collection of non-empty sets is non-empty''. Informally put, the axiom of choice says that given any collection ...
implies that the algebraic dual space is ''always'' of larger dimension (as a cardinal number) than the original vector space (since, if two bases have the same cardinality, the spanned vector spaces have the same cardinality). This is in contrast to the case of the continuous dual space, discussed below, which may be
isomorphic In mathematics, an isomorphism is a structure-preserving mapping between two structures of the same type that can be reversed by an inverse mapping. Two mathematical structures are isomorphic if an isomorphism exists between them. The word i ...
to the original vector space even if the latter is infinite-dimensional.


Bilinear products and dual spaces

If ''V'' is finite-dimensional, then ''V'' is isomorphic to ''V''∗. But there is in general no natural isomorphism between these two spaces. Any bilinear form on ''V'' gives a mapping of ''V'' into its dual space via :v\mapsto \langle v, \cdot\rangle where the right hand side is defined as the functional on ''V'' taking each to . In other words, the bilinear form determines a linear mapping :\Phi_ : V\to V^* defined by :\left Phi_(v), w\right= \langle v, w\rangle. If the bilinear form is nondegenerate, then this is an isomorphism onto a subspace of ''V''∗. If ''V'' is finite-dimensional, then this is an isomorphism onto all of ''V''∗. Conversely, any isomorphism \Phi from ''V'' to a subspace of ''V''∗ (resp., all of ''V''∗ if ''V'' is finite dimensional) defines a unique nondegenerate bilinear form on ''V'' by : \langle v, w \rangle_\Phi = (\Phi (v))(w) =
Phi (v), w Phi (; uppercase Φ, lowercase φ or ϕ; grc, ϕεῖ ''pheî'' ; Modern Greek: ''fi'' ) is the 21st letter of the Greek alphabet. In Archaic and Classical Greek (c. 9th century BC to 4th century BC), it represented an aspirated voicele ...
\, Thus there is a one-to-one correspondence between isomorphisms of ''V'' to a subspace of (resp., all of) ''V''∗ and nondegenerate bilinear forms on ''V''. If the vector space ''V'' is over the complex field, then sometimes it is more natural to consider sesquilinear forms instead of bilinear forms. In that case, a given sesquilinear form determines an isomorphism of ''V'' with the complex conjugate of the dual space : \Phi_ : V\to \overline. The conjugate of the dual space \overline can be identified with the set of all additive complex-valued functionals such that : f(\alpha v) = \overlinef(v).


Injection into the double-dual

There is a
natural Nature, in the broadest sense, is the physical world or universe. "Nature" can refer to the phenomena of the physical world, and also to life in general. The study of nature is a large, if not the only, part of science. Although humans ar ...
homomorphism In algebra, a homomorphism is a morphism, structure-preserving map (mathematics), map between two algebraic structures of the same type (such as two group (mathematics), groups, two ring (mathematics), rings, or two vector spaces). The word ''homo ...
\Psi from V into the double dual V^=\, defined by (\Psi(v))(\varphi)=\varphi(v) for all v\in V, \varphi\in V^*. In other words, if \mathrm_v:V^*\to F is the evaluation map defined by \varphi \mapsto \varphi(v), then \Psi: V \to V^ is defined as the map v\mapsto\mathrm_v. This map \Psi is always injective; it is an
isomorphism In mathematics, an isomorphism is a structure-preserving mapping between two structures of the same type that can be reversed by an inverse mapping. Two mathematical structures are isomorphic if an isomorphism exists between them. The word i ...
if and only if V is finite-dimensional. Indeed, the isomorphism of a finite-dimensional vector space with its double dual is an archetypal example of a natural isomorphism. Infinite-dimensional Hilbert spaces are not isomorphic to their algebraic double duals, but instead to their continuous double duals.


Transpose of a linear map

If is a
linear map In mathematics, and more specifically in linear algebra, a linear map (also called a linear mapping, linear transformation, vector space homomorphism, or in some contexts linear function) is a mapping V \to W between two vector spaces that ...
, then the '' transpose'' (or ''dual'') is defined by : f^*(\varphi) = \varphi \circ f \, for every ''\varphi \in W^*''. The resulting functional ''f^* (\varphi)'' in ''V^*'' is called the ''
pullback In mathematics, a pullback is either of two different, but related processes: precomposition and fiber-product. Its dual is a pushforward. Precomposition Precomposition with a function probably provides the most elementary notion of pullback: ...
'' of ''\varphi'' along ''f''. The following identity holds for all ''\varphi \in W^*'' and ''v \in V'': : ^*(\varphi),\, v= varphi,\, f(v) where the bracket �,·on the left is the natural pairing of ''V'' with its dual space, and that on the right is the natural pairing of ''W'' with its dual. This identity characterizes the transpose, and is formally similar to the definition of the adjoint. The assignment produces an injective linear map between the space of linear operators from ''V'' to ''W'' and the space of linear operators from ''W'' to ''V''; this homomorphism is an
isomorphism In mathematics, an isomorphism is a structure-preserving mapping between two structures of the same type that can be reversed by an inverse mapping. Two mathematical structures are isomorphic if an isomorphism exists between them. The word i ...
if and only if ''W'' is finite-dimensional. If then the space of linear maps is actually an
algebra Algebra () is one of the broad areas of mathematics. Roughly speaking, algebra is the study of mathematical symbols and the rules for manipulating these symbols in formulas; it is a unifying thread of almost all of mathematics. Elementary ...
under composition of maps, and the assignment is then an antihomomorphism of algebras, meaning that . In the language of category theory, taking the dual of vector spaces and the transpose of linear maps is therefore a contravariant functor from the category of vector spaces over ''F'' to itself. It is possible to identify (''f'') with ''f'' using the natural injection into the double dual. If the linear map ''f'' is represented by the
matrix Matrix most commonly refers to: * ''The Matrix'' (franchise), an American media franchise ** '' The Matrix'', a 1999 science-fiction action film ** "The Matrix", a fictional setting, a virtual reality environment, within ''The Matrix'' (franchi ...
''A'' with respect to two bases of ''V'' and ''W'', then ''f'' is represented by the transpose matrix ''A''T with respect to the dual bases of ''W'' and ''V'', hence the name. Alternatively, as ''f'' is represented by ''A'' acting on the left on column vectors, ''f'' is represented by the same matrix acting on the right on row vectors. These points of view are related by the canonical inner product on R''n'', which identifies the space of column vectors with the dual space of row vectors.


Quotient spaces and annihilators

Let ''S'' be a subset of ''V''. The annihilator of ''S'' in ''V''∗, denoted here ''S'', is the collection of linear functionals such that for all . That is, ''S'' consists of all linear functionals such that the restriction to ''S'' vanishes: . Within finite dimensional vector spaces, the annihilator is dual to (isomorphic to) the orthogonal complement. The annihilator of a subset is itself a vector space. The annihilator of the zero vector is the whole dual space: \^0 = V^*, and the annihilator of the whole space is just the zero covector: V^0 = \ \subseteq V^*. Furthermore, the assignment of an annihilator to a subset of ''V'' reverses inclusions, so that if , then : 0 \subseteq T^0 \subseteq S^0 \subseteq V^* . If ''A'' and ''B'' are two subsets of ''V'' then : A^0 + B^0 \subseteq (A \cap B)^0, and equality holds provided ''V'' is finite-dimensional. If ''Ai'' is any family of subsets of ''V'' indexed by ''i'' belonging to some index set ''I'', then : \left( \bigcup_ A_i \right)^0 = \bigcap_ A_i^0 . In particular if ''A'' and ''B'' are subspaces of ''V'' then : (A + B)^0 = A^0 \cap B^0 . If ''V'' is finite-dimensional and ''W'' is a vector subspace, then : W^ = W after identifying ''W'' with its image in the second dual space under the double duality isomorphism . In particular, forming the annihilator is a Galois connection on the lattice of subsets of a finite-dimensional vector space. If ''W'' is a subspace of ''V'' then the quotient space ''V''/''W'' is a vector space in its own right, and so has a dual. By the first isomorphism theorem, a functional factors through ''V''/''W'' if and only if ''W'' is in the kernel of ''f''. There is thus an isomorphism : (V/W)^* \cong W^0 . As a particular consequence, if ''V'' is a direct sum of two subspaces ''A'' and ''B'', then ''V''∗ is a direct sum of ''A'' and ''B''.


Dimensional analysis

The dual space is analogous to a "negative"-dimensional space. Most simply, since a vector v \in V can be paired with a covector \varphi \in V^* by the natural pairing \langle x, \varphi \rangle := \varphi (x) \in F to obtain a scalar, a covector can "cancel" the dimension of a vector, similar to
reducing a fraction A fraction (from la, fractus, "broken") represents a part of a whole or, more generally, any number of equal parts. When spoken in everyday English, a fraction describes how many parts of a certain size there are, for example, one-half, eight ...
. Thus while the direct sum V \oplus V^* is an -dimensional space (if is -dimensional), behaves as an -dimensional space, in the sense that its dimensions can be canceled against the dimensions of . This is formalized by tensor contraction. This arises in physics via dimensional analysis, where the dual space has inverse units. Under the natural pairing, these units cancel, and the resulting scalar value is dimensionless, as expected. For example in (continuous) Fourier analysis, or more broadly time–frequency analysis:To be precise, continuous Fourier analysis studies the space of functionals with domain a vector space and the space of functionals on the dual vector space. given a one-dimensional vector space with a unit of time , the dual space has units of
frequency Frequency is the number of occurrences of a repeating event per unit of time. It is also occasionally referred to as ''temporal frequency'' for clarity, and is distinct from ''angular frequency''. Frequency is measured in hertz (Hz) which is eq ...
: occurrences ''per'' unit of time (units of ). For example, if time is measured in seconds, the corresponding dual unit is the inverse second: over the course of 3 seconds, an event that occurs 2 times per second occurs a total of 6 times, corresponding to 3s \cdot 2s^ = 6. Similarly, if the primal space measures length, the dual space measures
inverse length Reciprocal length or inverse length is a quantity or measurement used in several branches of science and mathematics. As the reciprocal of length, common units used for this measurement include the reciprocal metre or inverse metre (symbol: m&minus ...
.


Continuous dual space

When dealing with topological vector spaces, the
continuous Continuity or continuous may refer to: Mathematics * Continuity (mathematics), the opposing concept to discreteness; common examples include ** Continuous probability distribution or random variable in probability and statistics ** Continuous g ...
linear functionals from the space into the base field \mathbb = \Complex (or \R) are particularly important. This gives rise to the notion of the "continuous dual space" or "topological dual" which is a linear subspace of the algebraic dual space V^*, denoted by V'. For any ''finite-dimensional'' normed vector space or topological vector space, such as Euclidean ''n-''space, the continuous dual and the algebraic dual coincide. This is however false for any infinite-dimensional normed space, as shown by the example of
discontinuous linear map In mathematics, linear maps form an important class of "simple" functions which preserve the algebraic structure of linear spaces and are often used as approximations to more general functions (see linear approximation). If the spaces involved ar ...
s. Nevertheless, in the theory of topological vector spaces the terms "continuous dual space" and "topological dual space" are often replaced by "dual space". For a topological vector space V its ''continuous dual space'', or ''topological dual space'', or just ''dual space'' (in the sense of the theory of topological vector spaces) V' is defined as the space of all continuous linear functionals \varphi:V\to. Important examples for continuous dual spaces are the space of compactly supported test functions \mathcal and its dual \mathcal', the space of arbitrary distributions (generalized functions); the space of arbitrary test functions \mathcal and its dual \mathcal', the space of compactly supported distributions; and the space of rapidly decreasing test functions \mathcal, the Schwartz space, and its dual \mathcal', the space of
tempered distributions Distributions, also known as Schwartz distributions or generalized functions, are objects that generalize the classical notion of functions in mathematical analysis. Distributions make it possible to differentiate functions whose derivatives d ...
(slowly growing distributions) in the theory of
generalized functions In mathematics, generalized functions are objects extending the notion of functions. There is more than one recognized theory, for example the theory of distributions. Generalized functions are especially useful in making discontinuous functions ...
.


Properties

If is a Hausdorff topological vector space (TVS), then the continuous dual space of is identical to the continuous dual space of the completion of .


Topologies on the dual

There is a standard construction for introducing a topology on the continuous dual V' of a topological vector space V. Fix a collection \mathcal of bounded subsets of V. This gives the topology on V of uniform convergence on sets from \mathcal, or what is the same thing, the topology generated by
seminorm In mathematics, particularly in functional analysis, a seminorm is a vector space norm that need not be positive definite. Seminorms are intimately connected with convex sets: every seminorm is the Minkowski functional of some absorbing disk a ...
s of the form :\, \varphi\, _A = \sup_ , \varphi(x), , where \varphi is a continuous linear functional on V, and A runs over the class \mathcal. This means that a net of functionals \varphi_i tends to a functional \varphi in V' if and only if :\text A\in\mathcal\qquad \, \varphi_i-\varphi\, _A = \sup_ , \varphi_i(x)-\varphi(x), \underset 0. Usually (but not necessarily) the class \mathcal is supposed to satisfy the following conditions: * Each point x of V belongs to some set A\in\mathcal: ::\text x \in V\quad \text A \in \mathcal\quad \text x \in A. * Each two sets A \in \mathcal and B \in \mathcal are contained in some set C \in \mathcal: ::\text A, B \in \mathcal\quad \text C \in \mathcal\quad \text A \cup B \subseteq C. * \mathcal is closed under the operation of multiplication by scalars: ::\text A \in \mathcal\quad \text \lambda \in \quad \text \lambda \cdot A \in \mathcal. If these requirements are fulfilled then the corresponding topology on V' is Hausdorff and the sets :U_A ~=~ \left \,\qquad \text A \in \mathcal form its local base. Here are the three most important special cases. * The strong topology on V' is the topology of uniform convergence on bounded subsets in V (so here \mathcal can be chosen as the class of all bounded subsets in V). If V is a normed vector space (for example, a Banach space or a Hilbert space) then the strong topology on V' is normed (in fact a Banach space if the field of scalars is complete), with the norm ::\, \varphi\, = \sup_ , \varphi(x), . * The stereotype topology on V' is the topology of uniform convergence on totally bounded sets in V (so here \mathcal can be chosen as the class of all totally bounded subsets in V). * The weak topology on V' is the topology of uniform convergence on finite subsets in V (so here \mathcal can be chosen as the class of all finite subsets in V). Each of these three choices of topology on V' leads to a variant of
reflexivity property In mathematics, a binary relation ''R'' on a set ''X'' is reflexive if it relates every element of ''X'' to itself. An example of a reflexive relation is the relation " is equal to" on the set of real numbers, since every real number is equal t ...
for topological vector spaces: * If V' is endowed with the strong topology, then the corresponding notion of reflexivity is the standard one: the spaces reflexive in this sense are just called ''reflexive''. * If V' is endowed with the stereotype dual topology, then the corresponding reflexivity is presented in the theory of
stereotype space In the area of mathematics known as functional analysis, a reflexive space is a locally convex topological vector space (TVS) for which the canonical evaluation map from X into its bidual (which is the strong dual of the strong dual of X) is an iso ...
s: the spaces reflexive in this sense are called ''stereotype''. * If V' is endowed with the weak topology, then the corresponding reflexivity is presented in the theory of dual pairs: the spaces reflexive in this sense are arbitrary (Hausdorff) locally convex spaces with the weak topology.


Examples

Let 1 < ''p'' < ∞ be a real number and consider the Banach space '' â„“ p'' of all
sequence In mathematics, a sequence is an enumerated collection of objects in which repetitions are allowed and order matters. Like a set, it contains members (also called ''elements'', or ''terms''). The number of elements (possibly infinite) is called ...
s for which :\, \mathbf\, _p = \left ( \sum_^\infty , a_n, ^p \right) ^ < \infty. Define the number ''q'' by . Then the continuous dual of ''â„“'' ''p'' is naturally identified with ''â„“'' ''q'': given an element \varphi \in (\ell^p)', the corresponding element of is the sequence (\varphi(\mathbf _n)) where \mathbf _n denotes the sequence whose -th term is 1 and all others are zero. Conversely, given an element , the corresponding continuous linear functional ''\varphi'' on is defined by :\varphi (\mathbf) = \sum_n a_n b_n for all (see Hölder's inequality). In a similar manner, the continuous dual of is naturally identified with (the space of bounded sequences). Furthermore, the continuous duals of the Banach spaces ''c'' (consisting of all convergent sequences, with the supremum norm) and ''c''0 (the sequences converging to zero) are both naturally identified with . By the Riesz representation theorem, the continuous dual of a Hilbert space is again a Hilbert space which is anti-isomorphic to the original space. This gives rise to the bra–ket notation used by physicists in the mathematical formulation of
quantum mechanics Quantum mechanics is a fundamental theory in physics that provides a description of the physical properties of nature at the scale of atoms and subatomic particles. It is the foundation of all quantum physics including quantum chemistry, ...
. By the Riesz–Markov–Kakutani representation theorem, the continuous dual of certain spaces of continuous functions can be described using measures.


Transpose of a continuous linear map

If is a continuous linear map between two topological vector spaces, then the (continuous) transpose is defined by the same formula as before: :T'(\varphi) = \varphi \circ T, \quad \varphi \in W'. The resulting functional is in . The assignment produces a linear map between the space of continuous linear maps from ''V'' to ''W'' and the space of linear maps from to . When ''T'' and ''U'' are composable continuous linear maps, then :(U \circ T)' = T' \circ U'. When ''V'' and ''W'' are normed spaces, the norm of the transpose in is equal to that of ''T'' in . Several properties of transposition depend upon the Hahn–Banach theorem. For example, the bounded linear map ''T'' has dense range if and only if the transpose is injective. When ''T'' is a
compact Compact as used in politics may refer broadly to a pact or treaty; in more specific cases it may refer to: * Interstate compact * Blood compact, an ancient ritual of the Philippines * Compact government, a type of colonial rule utilized in Britis ...
linear map between two Banach spaces ''V'' and ''W'', then the transpose is compact. This can be proved using the Arzelà–Ascoli theorem. When ''V'' is a Hilbert space, there is an antilinear isomorphism ''iV'' from ''V'' onto its continuous dual . For every bounded linear map ''T'' on ''V'', the transpose and the adjoint operators are linked by :i_V \circ T^* = T' \circ i_V. When ''T'' is a continuous linear map between two topological vector spaces ''V'' and ''W'', then the transpose is continuous when and are equipped with "compatible" topologies: for example, when for and , both duals have the strong topology of uniform convergence on bounded sets of ''X'', or both have the weak-∗ topology of pointwise convergence on ''X''. The transpose is continuous from to , or from to .


Annihilators

Assume that ''W'' is a closed linear subspace of a normed space ''V'', and consider the annihilator of ''W'' in , :W^\perp = \. Then, the dual of the quotient can be identified with ''W''⊥, and the dual of ''W'' can be identified with the quotient . Indeed, let ''P'' denote the canonical surjection from ''V'' onto the quotient ; then, the transpose is an isometric isomorphism from into , with range equal to ''W''⊥. If ''j'' denotes the injection map from ''W'' into ''V'', then the kernel of the transpose is the annihilator of ''W'': :\ker (j') = W^\perp and it follows from the Hahn–Banach theorem that induces an isometric isomorphism .


Further properties

If the dual of a normed space is separable, then so is the space itself. The converse is not true: for example, the space is separable, but its dual is not.


Double dual

In analogy with the case of the algebraic double dual, there is always a naturally defined continuous linear operator from a normed space ''V'' into its continuous double dual , defined by : \Psi(x)(\varphi) = \varphi(x), \quad x \in V, \ \varphi \in V' . As a consequence of the Hahn–Banach theorem, this map is in fact an
isometry In mathematics, an isometry (or congruence, or congruent transformation) is a distance-preserving transformation between metric spaces, usually assumed to be bijective. The word isometry is derived from the Ancient Greek: ἴσος ''isos'' ...
, meaning for all . Normed spaces for which the map Ψ is a bijection are called reflexive. When ''V'' is a topological vector space then Ψ(''x'') can still be defined by the same formula, for every , however several difficulties arise. First, when ''V'' is not locally convex, the continuous dual may be equal to and the map Ψ trivial. However, if ''V'' is Hausdorff and locally convex, the map Ψ is injective from ''V'' to the algebraic dual of the continuous dual, again as a consequence of the Hahn–Banach theorem.If ''V'' is locally convex but not Hausdorff, the kernel of Ψ is the smallest closed subspace containing . Second, even in the locally convex setting, several natural vector space topologies can be defined on the continuous dual , so that the continuous double dual is not uniquely defined as a set. Saying that Ψ maps from ''V'' to , or in other words, that Ψ(''x'') is continuous on for every , is a reasonable minimal requirement on the topology of , namely that the evaluation mappings : \varphi \in V' \mapsto \varphi(x), \quad x \in V , be continuous for the chosen topology on . Further, there is still a choice of a topology on , and continuity of Ψ depends upon this choice. As a consequence, defining reflexivity in this framework is more involved than in the normed case.


See also

* Covariance and contravariance of vectors * Dual module *
Dual norm In functional analysis, the dual norm is a measure of size for a continuous linear function defined on a normed vector space. Definition Let X be a normed vector space with norm \, \cdot\, and let X^* denote its continuous dual space. The du ...
* Duality (mathematics) *
Duality (projective geometry) In geometry, a striking feature of projective planes is the symmetry of the roles played by points and lines in the definitions and theorems, and ( plane) duality is the formalization of this concept. There are two approaches to the subject of ...
* Pontryagin duality * Reciprocal lattice – dual space basis, in crystallography


Notes


References


Bibliography

* * * * * * * * . * * * * * * * *


External links

* Functional analysis {{DEFAULTSORT:Dual Space Linear algebra
Space Space is the boundless three-dimensional extent in which objects and events have relative position and direction. In classical physics, physical space is often conceived in three linear dimensions, although modern physicists usually consi ...