Metrizable topological vector space

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Template:Short description In functional analysis and related areas of mathematics, a metrizable (resp. pseudometrizable) topological vector space (TVS) is a TVS whose topology is induced by a metric (resp. pseudometric). An LM-space is an inductive limit of a sequence of locally convex metrizable TVS.

Pseudometrics and metrics

A pseudometric on a set X is a map d:X×X satisfying the following properties:

  1. d(x,x)=0 for all xX;
  2. Symmetry: d(x,y)=d(y,x) for all x,yX;
  3. Subadditivity: d(x,z)d(x,y)+d(y,z) for all x,y,zX.

A pseudometric is called a metric if it satisfies:

  1. Identity of indiscernibles: for all x,yX, if d(x,y)=0 then x=y.

Ultrapseudometric

A pseudometric d on X is called a ultrapseudometric or a strong pseudometric if it satisfies:

  1. Strong/Ultrametric triangle inequality: d(x,z)max{d(x,y),d(y,z)} for all x,y,zX.

Pseudometric space

A pseudometric space is a pair (X,d) consisting of a set X and a pseudometric d on X such that X's topology is identical to the topology on X induced by d. We call a pseudometric space (X,d) a metric space (resp. ultrapseudometric space) when d is a metric (resp. ultrapseudometric).

Topology induced by a pseudometric

If d is a pseudometric on a set X then collection of open balls: Br(z):={xX:d(x,z)<r} as z ranges over X and r>0 ranges over the positive real numbers, forms a basis for a topology on X that is called the d-topology or the pseudometric topology on X induced by d.

Template:Em: If (X,d) is a pseudometric space and X is treated as a topological space, then unless indicated otherwise, it should be assumed that X is endowed with the topology induced by d.

Pseudometrizable space

A topological space (X,τ) is called pseudometrizable (resp. metrizable, ultrapseudometrizable) if there exists a pseudometric (resp. metric, ultrapseudometric) d on X such that τ is equal to the topology induced by d.Template:Sfn

Pseudometrics and values on topological groups

An additive topological group is an additive group endowed with a topology, called a group topology, under which addition and negation become continuous operators.

A topology τ on a real or complex vector space X is called a vector topology or a TVS topology if it makes the operations of vector addition and scalar multiplication continuous (that is, if it makes X into a topological vector space).

Every topological vector space (TVS) X is an additive commutative topological group but not all group topologies on X are vector topologies. This is because despite it making addition and negation continuous, a group topology on a vector space X may fail to make scalar multiplication continuous. For instance, the discrete topology on any non-trivial vector space makes addition and negation continuous but do not make scalar multiplication continuous.

Translation invariant pseudometrics

If X is an additive group then we say that a pseudometric d on X is translation invariant or just invariant if it satisfies any of the following equivalent conditions:

  1. Translation invariance: d(x+z,y+z)=d(x,y) for all x,y,zX;
  2. d(x,y)=d(xy,0) for all x,yX.

Value/G-seminorm

If X is a topological group the a value or G-seminorm on X (the G stands for Group) is a real-valued map p:X with the following properties:Template:Sfn

  1. Non-negative: p0.
  2. Subadditive: p(x+y)p(x)+p(y) for all x,yX;
  3. p(0)=0..
  4. Symmetric: p(x)=p(x) for all xX.

where we call a G-seminorm a G-norm if it satisfies the additional condition:

  1. Total/Positive definite: If p(x)=0 then x=0.

Properties of values

If p is a value on a vector space X then:

  • |p(x)p(y)|p(xy) for all x,yX.Template:Sfn
  • p(nx)np(x) and 1np(x)p(x/n) for all xX and positive integers n.Template:Sfn
  • The set {xX:p(x)=0} is an additive subgroup of X.Template:Sfn

Equivalence on topological groups

Template:Math theorem

Pseudometrizable topological groups

Template:Math theorem

An invariant pseudometric that doesn't induce a vector topology

Let X be a non-trivial (i.e. X{0}) real or complex vector space and let d be the translation-invariant trivial metric on X defined by d(x,x)=0 and d(x,y)=1 for all x,yX such that xy. The topology τ that d induces on X is the discrete topology, which makes (X,τ) into a commutative topological group under addition but does Template:Em form a vector topology on X because (X,τ) is disconnected but every vector topology is connected. What fails is that scalar multiplication isn't continuous on (X,τ).

This example shows that a translation-invariant (pseudo)metric is Template:Em enough to guarantee a vector topology, which leads us to define paranorms and F-seminorms.

Additive sequences

A collection 𝒩 of subsets of a vector space is called additiveTemplate:Sfn if for every N𝒩, there exists some U𝒩 such that U+UN.

Template:Math theorem

All of the above conditions are consequently a necessary for a topology to form a vector topology. Additive sequences of sets have the particularly nice property that they define non-negative continuous real-valued subadditive functions. These functions can then be used to prove many of the basic properties of topological vector spaces and also show that a Hausdorff TVS with a countable basis of neighborhoods is metrizable. The following theorem is true more generally for commutative additive topological groups.

Template:Math theorem

Template:Collapse top

Assume that n=(n1,,nk) always denotes a finite sequence of non-negative integers and use the notation: 2n:=2n1++2nk and Un:=Un1++Unk.

For any integers n0 and d>2, UnUn+1+Un+1Un+1+Un+2+Un+2Un+1+Un+2++Un+d+Un+d+1+Un+d+1.

From this it follows that if n=(n1,,nk) consists of distinct positive integers then UnU1+min(n).

It will now be shown by induction on k that if n=(n1,,nk) consists of non-negative integers such that 2n2M for some integer M0 then UnUM. This is clearly true for k=1 and k=2 so assume that k>2, which implies that all ni are positive. If all ni are distinct then this step is done, and otherwise pick distinct indices i<j such that ni=nj and construct m=(m1,,mk1) from n by replacing each ni with ni1 and deleting the jth element of n (all other elements of n are transferred to m unchanged). Observe that 2n=2m and UnUm (because Uni+UnjUni1) so by appealing to the inductive hypothesis we conclude that UnUmUM, as desired.

It is clear that f(0)=0 and that 0f1 so to prove that f is subadditive, it suffices to prove that f(x+y)f(x)+f(y) when x,yX are such that f(x)+f(y)<1, which implies that x,yU0. This is an exercise. If all Ui are symmetric then xUn if and only if xUn from which it follows that f(x)f(x) and f(x)f(x). If all Ui are balanced then the inequality f(sx)f(x) for all unit scalars s such that |s|1 is proved similarly. Because f is a nonnegative subadditive function satisfying f(0)=0, as described in the article on sublinear functionals, f is uniformly continuous on X if and only if f is continuous at the origin. If all Ui are neighborhoods of the origin then for any real r>0, pick an integer M>1 such that 2M<r so that xUM implies f(x)2M<r. If the set of all Ui form basis of balanced neighborhoods of the origin then it may be shown that for any n>1, there exists some 0<r2n such that f(x)<r implies xUn. Template:Collapse bottom

Paranorms

If X is a vector space over the real or complex numbers then a paranorm on X is a G-seminorm (defined above) p:X on X that satisfies any of the following additional conditions, each of which begins with "for all sequences x=(xi)i=1 in X and all convergent sequences of scalars s=(si)i=1":Template:Sfn

  1. Continuity of multiplication: if s is a scalar and xX are such that p(xix)0 and ss, then p(sixisx)0.
  2. Both of the conditions:
    • if s0 and if xX is such that p(xix)0 then p(sixi)0;
    • if p(x)0 then p(sxi)0 for every scalar s.
  3. Both of the conditions:
    • if p(x)0 and ss for some scalar s then p(sixi)0;
    • if s0 then p(six)0 for all xX.
  4. Separate continuity:Template:Sfn
    • if ss for some scalar s then p(sxisx)0 for every xX;
    • if s is a scalar, xX, and p(xix)0 then p(sxisx)0 .

A paranorm is called total if in addition it satisfies:

  • Total/Positive definite: p(x)=0 implies x=0.

Properties of paranorms

If p is a paranorm on a vector space X then the map d:X×X defined by d(x,y):=p(xy) is a translation-invariant pseudometric on X that defines a Template:Em on X.Template:Sfn

If p is a paranorm on a vector space X then:

  • the set {xX:p(x)=0} is a vector subspace of X.Template:Sfn
  • p(x+n)=p(x) for all x,nX with p(n)=0.Template:Sfn
  • If a paranorm p satisfies p(sx)|s|p(x) for all xX and scalars s, then p is absolutely homogeneity (i.e. equality holds)Template:Sfn and thus p is a seminorm.

Examples of paranorms

  • If d is a translation-invariant pseudometric on a vector space X that induces a vector topology τ on X (i.e. (X,τ) is a TVS) then the map p(x):=d(xy,0) defines a continuous paranorm on (X,τ); moreover, the topology that this paranorm p defines in X is τ.Template:Sfn
  • If p is a paranorm on X then so is the map q(x):=p(x)/[1+p(x)].Template:Sfn
  • Every positive scalar multiple of a paranorm (resp. total paranorm) is again such a paranorm (resp. total paranorm).
  • Every seminorm is a paranorm.Template:Sfn
  • The restriction of an paranorm (resp. total paranorm) to a vector subspace is an paranorm (resp. total paranorm).Template:Sfn
  • The sum of two paranorms is a paranorm.Template:Sfn
  • If p and q are paranorms on X then so is (pq)(x):=inf{p(y)+q(z):x=y+z with y,zX}. Moreover, (pq)p and (pq)q. This makes the set of paranorms on X into a conditionally complete lattice.Template:Sfn
  • Each of the following real-valued maps are paranorms on X:=2:
    • (x,y)|x|
    • (x,y)|x|+|y|
  • The real-valued maps (x,y)|x2y2| and (x,y)|x2y2|3/2 are Template:Em paranorms on X:=2.Template:Sfn
  • If x=(xi)iI is a Hamel basis on a vector space X then the real-valued map that sends x=iIsixiX (where all but finitely many of the scalars si are 0) to iI|si| is a paranorm on X, which satisfies p(sx)=|s|p(x) for all xX and scalars s.Template:Sfn
  • The function p(x):=|sin(πx)|+min{2,|x|} is a paranorm on that is Template:Em balanced but nevertheless equivalent to the usual norm on R. Note that the function x|sin(πx)| is subadditive.Template:Sfn
  • Let X be a complex vector space and let X denote X considered as a vector space over . Any paranorm on X is also a paranorm on X.Template:Sfn

F-seminorms

If X is a vector space over the real or complex numbers then an F-seminorm on X (the F stands for Fréchet) is a real-valued map p:X with the following four properties: Template:Sfn

  1. Non-negative: p0.
  2. Subadditive: p(x+y)p(x)+p(y) for all x,yX
  3. Balanced: p(ax)p(x) for xX all scalars a satisfying |a|1;
    • This condition guarantees that each set of the form {zX:p(z)r} or {zX:p(z)<r} for some r0 is a balanced set.
  4. For every xX, p(1nx)0 as n
    • The sequence (1n)n=1 can be replaced by any positive sequence converging to the zero.Template:Sfn

An F-seminorm is called an F-norm if in addition it satisfies:

  1. Total/Positive definite: p(x)=0 implies x=0.

An F-seminorm is called monotone if it satisfies:

  1. Monotone: p(rx)<p(sx) for all non-zero xX and all real s and t such that s<t.Template:Sfn

F-seminormed spaces

An F-seminormed space (resp. F-normed space)Template:Sfn is a pair (X,p) consisting of a vector space X and an F-seminorm (resp. F-norm) p on X.

If (X,p) and (Z,q) are F-seminormed spaces then a map f:XZ is called an isometric embeddingTemplate:Sfn if q(f(x)f(y))=p(x,y) for all x,yX.

Every isometric embedding of one F-seminormed space into another is a topological embedding, but the converse is not true in general.Template:Sfn

Examples of F-seminorms

  • Every positive scalar multiple of an F-seminorm (resp. F-norm, seminorm) is again an F-seminorm (resp. F-norm, seminorm).
  • The sum of finitely many F-seminorms (resp. F-norms) is an F-seminorm (resp. F-norm).
  • If p and q are F-seminorms on X then so is their pointwise supremum xsup{p(x),q(x)}. The same is true of the supremum of any non-empty finite family of F-seminorms on X.Template:Sfn
  • The restriction of an F-seminorm (resp. F-norm) to a vector subspace is an F-seminorm (resp. F-norm).Template:Sfn
  • A non-negative real-valued function on X is a seminorm if and only if it is a convex F-seminorm, or equivalently, if and only if it is a convex balanced G-seminorm.Template:Sfn In particular, every seminorm is an F-seminorm.
  • For any 0<p<1, the map f on n defined by [f(x1,,xn)]p=|x1|p+|xn|p is an F-norm that is not a norm.
  • If L:XY is a linear map and if q is an F-seminorm on Y, then qL is an F-seminorm on X.Template:Sfn
  • Let X be a complex vector space and let X denote X considered as a vector space over . Any F-seminorm on X is also an F-seminorm on X.Template:Sfn

Properties of F-seminorms

Every F-seminorm is a paranorm and every paranorm is equivalent to some F-seminorm.Template:Sfn Every F-seminorm on a vector space X is a value on X. In particular, p(x)=0, and p(x)=p(x) for all xX.

Topology induced by a single F-seminorm

Template:Math theorem

Topology induced by a family of F-seminorms

Suppose that is a non-empty collection of F-seminorms on a vector space X and for any finite subset and any r>0, let U,r:=p{xX:p(x)<r}.

The set {U,r:r>0,, finite } forms a filter base on X that also forms a neighborhood basis at the origin for a vector topology on X denoted by τ.Template:Sfn Each U,r is a balanced and absorbing subset of X.Template:Sfn These sets satisfyTemplate:Sfn U,r/2+U,r/2U,r.

  • τ is the coarsest vector topology on X making each p continuous.Template:Sfn
  • τ is Hausdorff if and only if for every non-zero xX, there exists some p such that p(x)>0.Template:Sfn
  • If is the set of all continuous F-seminorms on (X,τ) then τ=τ.Template:Sfn
  • If is the set of all pointwise suprema of non-empty finite subsets of of then is a directed family of F-seminorms and τ=τ.Template:Sfn

Template:Anchor

Fréchet combination

Suppose that p=(pi)i=1 is a family of non-negative subadditive functions on a vector space X.

The Fréchet combinationTemplate:Sfn of p is defined to be the real-valued map p(x):=i=1pi(x)2i[1+pi(x)].

As an F-seminorm

Assume that p=(pi)i=1 is an increasing sequence of seminorms on X and let p be the Fréchet combination of p. Then p is an F-seminorm on X that induces the same locally convex topology as the family p of seminorms.Template:Sfn

Since p=(pi)i=1 is increasing, a basis of open neighborhoods of the origin consists of all sets of the form {xX:pi(x)<r} as i ranges over all positive integers and r>0 ranges over all positive real numbers.

The translation invariant pseudometric on X induced by this F-seminorm p is d(x,y)=i=112ipi(xy)1+pi(xy).

This metric was discovered by Fréchet in his 1906 thesis for the spaces of real and complex sequences with pointwise operations.Template:Sfn

As a paranorm

If each pi is a paranorm then so is p and moreover, p induces the same topology on X as the family p of paranorms.Template:Sfn This is also true of the following paranorms on X:

Generalization

The Fréchet combination can be generalized by use of a bounded remetrization function.

A Template:EmTemplate:Sfn is a continuous non-negative non-decreasing map R:[0,)[0,) that has a bounded range, is subadditive (meaning that R(s+t)R(s)+R(t) for all s,t0), and satisfies R(s)=0 if and only if s=0.

Examples of bounded remetrization functions include arctant, tanht, tmin{t,1}, and tt1+t.Template:Sfn If d is a pseudometric (respectively, metric) on X and R is a bounded remetrization function then Rd is a bounded pseudometric (respectively, bounded metric) on X that is uniformly equivalent to d.Template:Sfn

Suppose that p=(pi)i=1 is a family of non-negative F-seminorm on a vector space X, R is a bounded remetrization function, and r=(ri)i=1 is a sequence of positive real numbers whose sum is finite. Then p(x):=i=1riR(pi(x)) defines a bounded F-seminorm that is uniformly equivalent to the p.Template:Sfn It has the property that for any net x=(xa)aA in X, p(x)0 if and only if pi(x)0 for all i.Template:Sfn p is an F-norm if and only if the p separate points on X.Template:Sfn

Characterizations

Of (pseudo)metrics induced by (semi)norms

A pseudometric (resp. metric) d is induced by a seminorm (resp. norm) on a vector space X if and only if d is translation invariant and absolutely homogeneous, which means that for all scalars s and all x,yX, in which case the function defined by p(x):=d(x,0) is a seminorm (resp. norm) and the pseudometric (resp. metric) induced by p is equal to d.

Of pseudometrizable TVS

If (X,τ) is a topological vector space (TVS) (where note in particular that τ is assumed to be a vector topology) then the following are equivalent:Template:Sfn

  1. X is pseudometrizable (i.e. the vector topology τ is induced by a pseudometric on X).
  2. X has a countable neighborhood base at the origin.
  3. The topology on X is induced by a translation-invariant pseudometric on X.
  4. The topology on X is induced by an F-seminorm.
  5. The topology on X is induced by a paranorm.

Of metrizable TVS

If (X,τ) is a TVS then the following are equivalent:

  1. X is metrizable.
  2. X is Hausdorff and pseudometrizable.
  3. X is Hausdorff and has a countable neighborhood base at the origin.Template:SfnTemplate:Sfn
  4. The topology on X is induced by a translation-invariant metric on X.Template:Sfn
  5. The topology on X is induced by an F-norm.Template:SfnTemplate:Sfn
  6. The topology on X is induced by a monotone F-norm.Template:Sfn
  7. The topology on X is induced by a total paranorm.

Template:Math theorem

Of locally convex pseudometrizable TVS

If (X,τ) is TVS then the following are equivalent:Template:Sfn

  1. X is locally convex and pseudometrizable.
  2. X has a countable neighborhood base at the origin consisting of convex sets.
  3. The topology of X is induced by a countable family of (continuous) seminorms.
  4. The topology of X is induced by a countable increasing sequence of (continuous) seminorms (pi)i=1 (increasing means that for all i, pipi+1.
  5. The topology of X is induced by an F-seminorm of the form: p(x)=n=12narctanpn(x) where (pi)i=1 are (continuous) seminorms on X.Template:Sfn

Quotients

Let M be a vector subspace of a topological vector space (X,τ).

  • If X is a pseudometrizable TVS then so is X/M.Template:Sfn
  • If X is a complete pseudometrizable TVS and M is a closed vector subspace of X then X/M is complete.Template:Sfn
  • If X is metrizable TVS and M is a closed vector subspace of X then X/M is metrizable.Template:Sfn
  • If p is an F-seminorm on X, then the map P:X/M defined by P(x+M):=inf{p(x+m):mM} is an F-seminorm on X/M that induces the usual quotient topology on X/M.Template:Sfn If in addition p is an F-norm on X and if M is a closed vector subspace of X then P is an F-norm on X.Template:Sfn

Examples and sufficient conditions

  • Every seminormed space (X,p) is pseudometrizable with a canonical pseudometric given by d(x,y):=p(xy) for all x,yX.Template:Sfn.
  • If (X,d) is pseudometric TVS with a translation invariant pseudometric d, then p(x):=d(x,0) defines a paranorm.Template:Sfn However, if d is a translation invariant pseudometric on the vector space X (without the addition condition that (X,d) is Template:Em), then d need not be either an F-seminormTemplate:Sfn nor a paranorm.
  • If a TVS has a bounded neighborhood of the origin then it is pseudometrizable; the converse is in general false.Template:Sfn
  • If a Hausdorff TVS has a bounded neighborhood of the origin then it is metrizable.Template:Sfn
  • Suppose X is either a DF-space or an LM-space. If X is a sequential space then it is either metrizable or else a Montel DF-space.

If X is Hausdorff locally convex TVS then X with the strong topology, (X,b(X,X)), is metrizable if and only if there exists a countable set of bounded subsets of X such that every bounded subset of X is contained in some element of .Template:Sfn

The strong dual space Xb of a metrizable locally convex space (such as a Fréchet space[1]) X is a DF-space.Template:Sfn The strong dual of a DF-space is a Fréchet space.Template:Sfn The strong dual of a reflexive Fréchet space is a bornological space.Template:Sfn The strong bidual (that is, the strong dual space of the strong dual space) of a metrizable locally convex space is a Fréchet space.Template:Sfn If X is a metrizable locally convex space then its strong dual Xb has one of the following properties, if and only if it has all of these properties: (1) bornological, (2) infrabarreled, (3) barreled.Template:Sfn

Normability

A topological vector space is seminormable if and only if it has a convex bounded neighborhood of the origin. Moreover, a TVS is normable if and only if it is Hausdorff and seminormable.Template:Sfn Every metrizable TVS on a finite-dimensional vector space is a normable locally convex complete TVS, being TVS-isomorphic to Euclidean space. Consequently, any metrizable TVS that is Template:Em normable must be infinite dimensional.

If M is a metrizable locally convex TVS that possess a countable fundamental system of bounded sets, then M is normable.Template:Sfn

If X is a Hausdorff locally convex space then the following are equivalent:

  1. X is normable.
  2. X has a (von Neumann) bounded neighborhood of the origin.
  3. the strong dual space Xb of X is normable.Template:Sfn

and if this locally convex space X is also metrizable, then the following may be appended to this list:

  1. the strong dual space of X is metrizable.Template:Sfn
  2. the strong dual space of X is a Fréchet–Urysohn locally convex space.[1]

In particular, if a metrizable locally convex space X (such as a Fréchet space) is Template:Em normable then its strong dual space Xb is not a Fréchet–Urysohn space and consequently, this complete Hausdorff locally convex space Xb is also neither metrizable nor normable.

Another consequence of this is that if X is a reflexive locally convex TVS whose strong dual Xb is metrizable then Xb is necessarily a reflexive Fréchet space, X is a DF-space, both X and Xb are necessarily complete Hausdorff ultrabornological distinguished webbed spaces, and moreover, Xb is normable if and only if X is normable if and only if X is Fréchet–Urysohn if and only if X is metrizable. In particular, such a space X is either a Banach space or else it is not even a Fréchet–Urysohn space.

Metrically bounded sets and bounded sets

Suppose that (X,d) is a pseudometric space and BX. The set B is metrically bounded or d-bounded if there exists a real number R>0 such that d(x,y)R for all x,yB; the smallest such R is then called the diameter or d-diameter of B.Template:Sfn If B is bounded in a pseudometrizable TVS X then it is metrically bounded; the converse is in general false but it is true for locally convex metrizable TVSs.Template:Sfn

Properties of pseudometrizable TVS

Template:Math theorem

Completeness

Template:Main

Every topological vector space (and more generally, a topological group) has a canonical uniform structure, induced by its topology, which allows the notions of completeness and uniform continuity to be applied to it. If X is a metrizable TVS and d is a metric that defines X's topology, then its possible that X is complete as a TVS (i.e. relative to its uniformity) but the metric d is Template:Em a complete metric (such metrics exist even for X=). Thus, if X is a TVS whose topology is induced by a pseudometric d, then the notion of completeness of X (as a TVS) and the notion of completeness of the pseudometric space (X,d) are not always equivalent. The next theorem gives a condition for when they are equivalent:

Template:Math theorem

Template:Math theorem

Template:Math theorem

If M is a closed vector subspace of a complete pseudometrizable TVS X, then the quotient space X/M is complete.Template:Sfn If M is a Template:Em vector subspace of a metrizable TVS X and if the quotient space X/M is complete then so is X.Template:Sfn If X is not complete then M:=X, but not complete, vector subspace of X.

A Baire separable topological group is metrizable if and only if it is cosmic.[1]

Subsets and subsequences

  • Let M be a separable locally convex metrizable topological vector space and let C be its completion. If S is a bounded subset of C then there exists a bounded subset R of X such that SclCR.Template:Sfn
  • Every totally bounded subset of a locally convex metrizable TVS X is contained in the closed convex balanced hull of some sequence in X that converges to 0.
  • In a pseudometrizable TVS, every bornivore is a neighborhood of the origin.Template:Sfn
  • If d is a translation invariant metric on a vector space X, then d(nx,0)nd(x,0) for all xX and every positive integer n.Template:Sfn
  • If (xi)i=1 is a null sequence (that is, it converges to the origin) in a metrizable TVS then there exists a sequence (ri)i=1 of positive real numbers diverging to such that (rixi)i=10.Template:Sfn
  • A subset of a complete metric space is closed if and only if it is complete. If a space X is not complete, then X is a closed subset of X that is not complete.
  • If X is a metrizable locally convex TVS then for every bounded subset B of X, there exists a bounded disk D in X such that BXD, and both X and the auxiliary normed space XD induce the same subspace topology on B.Template:Sfn

Template:Math theorem

Template:Math theorem

Generalized series

As described in this article's section on generalized series, for any I-indexed family family (ri)iI of vectors from a TVS X, it is possible to define their sum iIri as the limit of the net of finite partial sums FFiniteSubsets(I)iFri where the domain FiniteSubsets(I) is directed by . If I= and X=, for instance, then the generalized series iri converges if and only if i=1ri converges unconditionally in the usual sense (which for real numbers, is equivalent to absolute convergence). If a generalized series iIri converges in a metrizable TVS, then the set {iI:ri0} is necessarily countable (that is, either finite or countably infinite);[proof 1] in other words, all but at most countably many ri will be zero and so this generalized series iIri=ri0iIri is actually a sum of at most countably many non-zero terms.

Linear maps

If X is a pseudometrizable TVS and A maps bounded subsets of X to bounded subsets of Y, then A is continuous.Template:Sfn Discontinuous linear functionals exist on any infinite-dimensional pseudometrizable TVS.Template:Sfn Thus, a pseudometrizable TVS is finite-dimensional if and only if its continuous dual space is equal to its algebraic dual space.Template:Sfn

If F:XY is a linear map between TVSs and X is metrizable then the following are equivalent:

  1. F is continuous;
  2. F is a (locally) bounded map (that is, F maps (von Neumann) bounded subsets of X to bounded subsets of Y);Template:Sfn
  3. F is sequentially continuous;Template:Sfn
  4. the image under F of every null sequence in X is a bounded setTemplate:Sfn where by definition, a Template:Em is a sequence that converges to the origin.
  5. F maps null sequences to null sequences;

Open and almost open maps

Theorem: If X is a complete pseudometrizable TVS, Y is a Hausdorff TVS, and T:XY is a closed and almost open linear surjection, then T is an open map.Template:Sfn
Theorem: If T:XY is a surjective linear operator from a locally convex space X onto a barrelled space Y (e.g. every complete pseudometrizable space is barrelled) then T is almost open.Template:Sfn
Theorem: If T:XY is a surjective linear operator from a TVS X onto a Baire space Y then T is almost open.Template:Sfn
Theorem: Suppose T:XY is a continuous linear operator from a complete pseudometrizable TVS X into a Hausdorff TVS Y. If the image of T is non-meager in Y then T:XY is a surjective open map and Y is a complete metrizable space.Template:Sfn

Hahn-Banach extension property

Template:Main

A vector subspace M of a TVS X has the extension property if any continuous linear functional on M can be extended to a continuous linear functional on X.Template:Sfn Say that a TVS X has the Hahn-Banach extension property (HBEP) if every vector subspace of X has the extension property.Template:Sfn

The Hahn-Banach theorem guarantees that every Hausdorff locally convex space has the HBEP. For complete metrizable TVSs there is a converse:

Template:Math theorem

If a vector space X has uncountable dimension and if we endow it with the finest vector topology then this is a TVS with the HBEP that is neither locally convex or metrizable.Template:Sfn

See also

Notes

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Proofs

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References

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Bibliography

Template:Functional analysis Template:Topological vector spaces Template:Metric spaces


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