Spaces of test functions and distributions

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In mathematical analysis, the spaces of test functions and distributions are topological vector spaces (TVSs) that are used in the definition and application of distributions. Test functions are usually infinitely differentiable complex-valued (or sometimes real-valued) functions on a non-empty open subset that have compact support. The space of all test functions, denoted by is endowed with a certain topology, called the canonical LF-topology, that makes into a complete Hausdorff locally convex TVS. The strong dual space of is called the space of distributions on and is denoted by where the "" subscript indicates that the continuous dual space of denoted by is endowed with the strong dual topology.

Contents

There are other possible choices for the space of test functions, which lead to other different spaces of distributions. If then the use of Schwartz functions [note 1] as test functions gives rise to a certain subspace of whose elements are called tempered distributions. These are important because they allow the Fourier transform to be extended from "standard functions" to tempered distributions. The set of tempered distributions forms a vector subspace of the space of distributions and is thus one example of a space of distributions; there are many other spaces of distributions.

There also exist other major classes of test functions that are not subsets of such as spaces of analytic test functions, which produce very different classes of distributions. The theory of such distributions has a different character from the previous one because there are no analytic functions with non-empty compact support. [note 2] Use of analytic test functions leads to Sato's theory of hyperfunctions.

Notation

The following notation will be used throughout this article:

Definitions of test functions and distributions

In this section, we will formally define real-valued distributions on U. With minor modifications, one can also define complex-valued distributions, and one can replace with any (paracompact) smooth manifold.

Notation:
  1. Let
  2. Let denote the vector space of all k-times continuously differentiable real or complex-valued functions on U.
  3. For any compact subset let and both denote the vector space of all those functions such that
    • If then the domain of is U and not K. So although depends on both K and U, only K is typically indicated. The justification for this common practice is detailed below. The notation will only be used when the notation risks being ambiguous.
    • Every contains the constant 0 map, even if
  4. Let denote the set of all such that for some compact subset K of U.
    • Equivalently, is the set of all such that has compact support.
    • is equal to the union of all as ranges over
    • If is a real-valued function on U, then is an element of if and only if is a bump function. Every real-valued test function on is always also a complex-valued test function on
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Note that for all and any compact subsets K and L of U, we have:

Definition: Elements of are called test functions on U and is called the space of test function on U. We will use both and to denote this space.

Distributions on U are defined to be the continuous linear functionals on when this vector space is endowed with a particular topology called the canonical LF-topology. This topology is unfortunately not easy to define but it is nevertheless still possible to characterize distributions in a way so that no mention of the canonical LF-topology is made.

Proposition: If T is a linear functional on then the T is a distribution if and only if the following equivalent conditions are satisfied:

  1. For every compact subset there exist constants and (dependent on ) such that for all [1]
  2. For every compact subset there exist constants and such that for all with support contained in [2]
  3. For any compact subset and any sequence in if converges uniformly to zero on for all multi-indices , then

The above characterizations can be used to determine whether or not a linear functional is a distribution, but more advanced uses of distributions and test functions (such as applications to differential equations) is limited if no topologies are placed on and To define the space of distributions we must first define the canonical LF-topology, which in turn requires that several other locally convex topological vector spaces (TVSs) be defined first. First, a (non-normable) topology on will be defined, then every will be endowed with the subspace topology induced on it by and finally the (non-metrizable) canonical LF-topology on will be defined. The space of distributions, being defined as the continuous dual space of is then endowed with the (non-metrizable) strong dual topology induced by and the canonical LF-topology (this topology is a generalization of the usual operator norm induced topology that is placed on the continuous dual spaces of normed spaces). This finally permits consideration of more advanced notions such as convergence of distributions (both sequences and nets), various (sub)spaces of distributions, and operations on distributions, including extending differential equations to distributions.

Choice of compact sets K

Throughout, will be any collection of compact subsets of such that (1) and (2) for any compact there exists some such that The most common choices for are:

We make into a directed set by defining if and only if Note that although the definitions of the subsequently defined topologies explicitly reference in reality they do not depend on the choice of that is, if and are any two such collections of compact subsets of then the topologies defined on and by using in place of are the same as those defined by using in place of

Topology on Ck(U)

We now introduce the seminorms that will define the topology on Different authors sometimes use different families of seminorms so we list the most common families below. However, the resulting topology is the same no matter which family is used.

Suppose and is an arbitrary compact subset of Suppose an integer such that [note 3] and is a multi-index with length For define:

while for define all the functions above to be the constant 0 map.

All of the functions above are non-negative -valued [note 4] seminorms on As explained in this article, every set of seminorms on a vector space induces a locally convex vector topology.

Each of the following sets of seminorms generate the same locally convex vector topology on (so for example, the topology generated by the seminorms in is equal to the topology generated by those in ).

The vector space is endowed with the locally convex topology induced by any one of the four families of seminorms described above. This topology is also equal to the vector topology induced by all of the seminorms in

With this topology, becomes a locally convex Fréchet space that is not normable. Every element of is a continuous seminorm on Under this topology, a net in converges to if and only if for every multi-index with and every compact the net of partial derivatives converges uniformly to on [3] For any any (von Neumann) bounded subset of is a relatively compact subset of [4] In particular, a subset of is bounded if and only if it is bounded in for all [4] The space is a Montel space if and only if [5]

The topology on is the superior limit of the subspace topologies induced on by the TVSs as i ranges over the non-negative integers. [3] A subset of is open in this topology if and only if there exists such that is open when is endowed with the subspace topology induced on it by

Metric defining the topology

If the family of compact sets satisfies and for all then a complete translation-invariant metric on can be obtained by taking a suitable countable Fréchet combination of any one of the above defining families of seminorms (A through D). For example, using the seminorms results in the metric

Often, it is easier to just consider seminorms (avoiding any metric) and use the tools of functional analysis.

Topology on Ck(K)

As before, fix Recall that if is any compact subset of then

Assumption: For any compact subset we will henceforth assume that is endowed with the subspace topology it inherits from the Fréchet space

For any compact subset is a closed subspace of the Fréchet space and is thus also a Fréchet space. For all compact satisfying denote the inclusion map by Then this map is a linear embedding of TVSs (that is, it is a linear map that is also a topological embedding) whose image (or "range") is closed in its codomain; said differently, the topology on is identical to the subspace topology it inherits from and also is a closed subset of The interior of relative to is empty. [6]

If is finite then is a Banach space [7] with a topology that can be defined by the norm

And when then is even a Hilbert space. [7] The space is a distinguished Schwartz Montel space so if then it is not normable and thus not a Banach space (although like all other it is a Fréchet space).

Trivial extensions and independence of Ck(K)'s topology from U

The definition of depends on U so we will let denote the topological space which by definition is a topological subspace of Suppose is an open subset of containing and for any compact subset let is the vector subspace of consisting of maps with support contained in Given its trivial extension to V is by definition, the function defined by: so that Let denote the map that sends a function in to its trivial extension on V. This map is a linear injection and for every compact subset (where is also a compact subset of since ) we have If I is restricted to then the following induced linear map is a homeomorphism (and thus a TVS-isomorphism): and thus the next two maps (which like the previous map are defined by ) are topological embeddings: (the topology on is the canonical LF topology, which is defined later). Using the injection the vector space is canonically identified with its image in (however, if then is not a topological embedding when these spaces are endowed with their canonical LF topologies, although it is continuous). [8] Because through this identification, can also be considered as a subset of Importantly, the subspace topology inherits from (when it is viewed as a subset of ) is identical to the subspace topology that it inherits from (when is viewed instead as a subset of via the identification). Thus the topology on is independent of the open subset U of that contains K. [6] This justifies the practice of written instead of

Canonical LF topology

Recall that denote all those functions in that have compact support in where note that is the union of all as K ranges over Moreover, for every k, is a dense subset of The special case when gives us the space of test functions.

is called the space of test functions on and it may also be denoted by

This section defines the canonical LF topology as a direct limit. It is also possible to define this topology in terms of its neighborhoods of the origin, which is described afterwards.

Topology defined by direct limits

For any two sets K and L, we declare that if and only if which in particular makes the collection of compact subsets of U into a directed set (we say that such a collection is directed by subset inclusion). For all compact satisfying there are inclusion maps

Recall from above that the map is a topological embedding. The collection of maps forms a direct system in the category of locally convex topological vector spaces that is directed by (under subset inclusion). This system's direct limit (in the category of locally convex TVSs) is the pair where are the natural inclusions and where is now endowed with the (unique) strongest locally convex topology making all of the inclusion maps continuous.

The canonical LF topology on is the finest locally convex topology on making all of the inclusion maps continuous (where K ranges over ).
As is common in mathematics literature, the space is henceforth assumed to be endowed with its canonical LF topology (unless explicitly stated otherwise).

Topology defined by neighborhoods of the origin

If U is a convex subset of then U is a neighborhood of the origin in the canonical LF topology if and only if it satisfies the following condition:

Note that any convex set satisfying this condition is necessarily absorbing in Since the topology of any topological vector space is translation-invariant, any TVS-topology is completely determined by the set of neighborhood of the origin. This means that one could actually define the canonical LF topology by declaring that a convex balanced subset U is a neighborhood of the origin if and only if it satisfies condition CN .

Topology defined via differential operators

A linear differential operator in U with smooth coefficients is a sum where and all but finitely many of are identically 0. The integer is called the order of the differential operator If is a linear differential operator of order k then it induces a canonical linear map defined by where we shall reuse notation and also denote this map by [9]

For any the canonical LF topology on is the weakest locally convex TVS topology making all linear differential operators in of order into continuous maps from into [9]

Properties of the canonical LF topology

Canonical LF topology's independence from K

One benefit of defining the canonical LF topology as the direct limit of a direct system is that we may immediately use the universal property of direct limits. Another benefit is that we can use well-known results from category theory to deduce that the canonical LF topology is actually independent of the particular choice of the directed collection of compact sets. And by considering different collections (in particular, those mentioned at the beginning of this article), we may deduce different properties of this topology. In particular, we may deduce that the canonical LF topology makes into a Hausdorff locally convex strict LF-space (and also a strict LB-space if ), which of course is the reason why this topology is called "the canonical LF topology" (see this footnote for more details). [note 5]

Universal property

From the universal property of direct limits, we know that if is a linear map into a locally convex space Y (not necessarily Hausdorff), then u is continuous if and only if u is bounded if and only if for every the restriction of u to is continuous (or bounded). [10] [11]

Dependence of the canonical LF topology on U

Suppose V is an open subset of containing Let denote the map that sends a function in to its trivial extension on V (which was defined above). This map is a continuous linear map. [8] If (and only if) then is not a dense subset of and is not a topological embedding. [8] Consequently, if then the transpose of is neither one-to-one nor onto. [8]

Bounded subsets

A subset is bounded in if and only if there exists some such that and is a bounded subset of [11] Moreover, if is compact and then is bounded in if and only if it is bounded in For any any bounded subset of (resp. ) is a relatively compact subset of (resp. ), where [11]

Non-metrizability

For all compact the interior of in is empty so that is of the first category in itself. It follows from Baire's theorem that is not metrizable and thus also not normable (see this footnote [note 6] for an explanation of how the non-metrizable space can be complete even though it does not admit a metric). The fact that is a nuclear Montel space makes up for the non-metrizability of (see this footnote for a more detailed explanation). [note 7]

Relationships between spaces

Using the universal property of direct limits and the fact that the natural inclusions are all topological embedding, one may show that all of the maps are also topological embeddings. Said differently, the topology on is identical to the subspace topology that it inherits from where recall that 's topology was defined to be the subspace topology induced on it by In particular, both and induces the same subspace topology on However, this does not imply that the canonical LF topology on is equal to the subspace topology induced on by ; these two topologies on are in fact never equal to each other since the canonical LF topology is never metrizable while the subspace topology induced on it by is metrizable (since recall that is metrizable). The canonical LF topology on is actually strictly finer than the subspace topology that it inherits from (thus the natural inclusion is continuous but not a topological embedding). [7]

Indeed, the canonical LF topology is so fine that if denotes some linear map that is a "natural inclusion" (such as or or other maps discussed below) then this map will typically be continuous, which (as is explained below) is ultimately the reason why locally integrable functions, Radon measures, etc. all induce distributions (via the transpose of such a "natural inclusion"). Said differently, the reason why there are so many different ways of defining distributions from other spaces ultimately stems from how very fine the canonical LF topology is. Moreover, since distributions are just continuous linear functionals on the fine nature of the canonical LF topology means that more linear functionals on end up being continuous ("more" means as compared to a coarser topology that we could have placed on such as for instance, the subspace topology induced by some which although it would have made metrizable, it would have also resulted in fewer linear functionals on being continuous and thus there would have been fewer distributions; moreover, this particular coarser topology also has the disadvantage of not making into a complete TVS [12] ).

Other properties
  • The differentiation map is a continuous linear operator. [13]
  • The bilinear multiplication map given by is not continuous; it is however, hypocontinuous. [14]

Distributions

As discussed earlier, continuous linear functionals on a are known as distributions on U. Thus the set of all distributions on U is the continuous dual space of which when endowed with the strong dual topology is denoted by

By definition, a distribution on U is defined to be a continuous linear functional on Said differently, a distribution on U is an element of the continuous dual space of when is endowed with its canonical LF topology.

We have the canonical duality pairing between a distribution T on U and a test function which is denoted using angle brackets by

One interprets this notation as the distribution T acting on the test function to give a scalar, or symmetrically as the test function acting on the distribution T.

Characterizations of distributions

Proposition. If T is a linear functional on then the following are equivalent:

  1. T is a distribution;
  2. Definition : T is a continuous function.
  3. T is continuous at the origin.
  4. T is uniformly continuous.
  5. T is a bounded operator.
  6. T is sequentially continuous.
    • explicitly, for every sequence in that converges in to some [note 8]
  7. T is sequentially continuous at the origin; in other words, T maps null sequences [note 9] to null sequences.
    • explicitly, for every sequence in that converges in to the origin (such a sequence is called a null sequence),
    • a null sequence is by definition a sequence that converges to the origin.
  8. T maps null sequences to bounded subsets.
    • explicitly, for every sequence in that converges in to the origin, the sequence is bounded.
  9. T maps Mackey convergent null sequences [note 10] to bounded subsets;
    • explicitly, for every Mackey convergent null sequence in the sequence is bounded.
    • a sequence is said to be Mackey convergent to 0 if there exists a divergent sequence of positive real number such that the sequence is bounded; every sequence that is Mackey convergent to 0 necessarily converges to the origin (in the usual sense).
  10. The kernel of T is a closed subspace of
  11. The graph of T is closed.
  12. There exists a continuous seminorm on such that
  13. There exists a constant a collection of continuous seminorms, that defines the canonical LF topology of and a finite subset such that [note 11]
  14. For every compact subset there exist constants and such that for all [1]
  15. For every compact subset there exist constants and such that for all with support contained in [2]
  16. For any compact subset and any sequence in if converges uniformly to zero for all multi-indices then
  17. Any of the three statements immediately above (that is, statements 14, 15, and 16) but with the additional requirement that compact set belongs to

Topology on the space of distributions

Definition and notation: The space of distributions on U, denoted by is the continuous dual space of endowed with the topology of uniform convergence on bounded subsets of [7] More succinctly, the space of distributions on U is

The topology of uniform convergence on bounded subsets is also called the strong dual topology . [note 12] This topology is chosen because it is with this topology that becomes a nuclear Montel space and it is with this topology that the kernels theorem of Schwartz holds. [15] No matter what dual topology is placed on [note 13] a sequence of distributions converges in this topology if and only if it converges pointwise (although this need not be true of a net). No matter which topology is chosen, will be a non-metrizable, locally convex topological vector space. The space is separable [16] and has the strong Pytkeev property [17] but it is neither a k-space [17] nor a sequential space, [16] which in particular implies that it is not metrizable and also that its topology can not be defined using only sequences.

Topological properties

Topological vector space categories

The canonical LF topology makes into a complete distinguished strict LF-space (and a strict LB-space if and only if [18] ), which implies that is a meager subset of itself. [19] Furthermore, as well as its strong dual space, is a complete Hausdorff locally convex barrelled bornological Mackey space. The strong dual of is a Fréchet space if and only if so in particular, the strong dual of which is the space of distributions on U, is not metrizable (note that the weak-* topology on also is not metrizable and moreover, it further lacks almost all of the nice properties that the strong dual topology gives ).

The three spaces and the Schwartz space as well as the strong duals of each of these three spaces, are complete nuclear [20] Montel [21] bornological spaces, which implies that all six of these locally convex spaces are also paracompact [22] reflexive barrelled Mackey spaces. The spaces and are both distinguished Fréchet spaces. Moreover, both and are Schwartz TVSs.

Convergent sequences

Convergent sequences and their insufficiency to describe topologies

The strong dual spaces of and are sequential spaces but not Fréchet-Urysohn spaces. [16] Moreover, neither the space of test functions nor its strong dual is a sequential space (not even an Ascoli space), [16] [23] which in particular implies that their topologies can not be defined entirely in terms of convergent sequences.

A sequence in converges in if and only if there exists some such that contains this sequence and this sequence converges in ; equivalently, it converges if and only if the following two conditions hold: [24]

  1. There is a compact set containing the supports of all
  2. For each multi-index the sequence of partial derivatives tends uniformly to

Neither the space nor its strong dual is a sequential space, [16] [23] and consequently, their topologies can not be defined entirely in terms of convergent sequences. For this reason, the above characterization of when a sequence converges is not enough to define the canonical LF topology on The same can be said of the strong dual topology on

What sequences do characterize

Nevertheless, sequences do characterize many important properties, as we now discuss. It is known that in the dual space of any Montel space, a sequence converges in the strong dual topology if and only if it converges in the weak* topology, [25] which in particular, is the reason why a sequence of distributions converges (in the strong dual topology) if and only if it converges pointwise (this leads many authors to use pointwise convergence to actually define the convergence of a sequence of distributions; this is fine for sequences but it does not extend to the convergence of nets of distributions since a net may converge pointwise but fail to converge in the strong dual topology).

Sequences characterize continuity of linear maps valued in locally convex space. Suppose X is a locally convex bornological space (such as any of the six TVSs mentioned earlier). Then a linear map into a locally convex space Y is continuous if and only if it maps null sequences [note 9] in X to bounded subsets of Y. [note 14] More generally, such a linear map is continuous if and only if it maps Mackey convergent null sequences [note 10] to bounded subsets of So in particular, if a linear map into a locally convex space is sequentially continuous at the origin then it is continuous. [26] However, this does not necessarily extend to non-linear maps and/or to maps valued in topological spaces that are not locally convex TVSs.

For every is sequentially dense in [27] Furthermore, is a sequentially dense subset of (with its strong dual topology) [28] and also a sequentially dense subset of the strong dual space of [28]

Sequences of distributions

A sequence of distributions converges with respect to the weak-* topology on to a distribution T if and only if for every test function For example, if is the function and is the distribution corresponding to then as so in Thus, for large the function can be regarded as an approximation of the Dirac delta distribution.

Other properties
  • The strong dual space of is TVS isomorphic to via the canonical TVS-isomorphism defined by sending to value at (that is, to the linear functional on defined by sending to );
  • On any bounded subset of the weak and strong subspace topologies coincide; the same is true for ;
  • Every weakly convergent sequence in is strongly convergent (although this does not extend to nets).

Localization of distributions

Preliminaries: Transpose of a linear operator

Operations on distributions and spaces of distributions are often defined by means of the transpose of a linear operator. This is because the transpose allows for a unified presentation of the many definitions in the theory of distributions and also because its properties are well known in functional analysis. [29] For instance, the well-known Hermitian adjoint of a linear operator between Hilbert spaces is just the operator's transpose (but with the Riesz representation theorem used to identify each Hilbert space with its continuous dual space). In general the transpose of a continuous linear map is the linear map or equivalently, it is the unique map satisfying for all and all (the prime symbol in does not denote a derivative of any kind; it merely indicates that is an element of the continuous dual space ). Since is continuous, the transpose is also continuous when both duals are endowed with their respective strong dual topologies; it is also continuous when both duals are endowed with their respective weak* topologies (see the articles polar topology and dual system for more details).

In the context of distributions, the characterization of the transpose can be refined slightly. Let be a continuous linear map. Then by definition, the transpose of is the unique linear operator that satisfies:

Since is dense in (here, actually refers to the set of distributions ) it is sufficient that the defining equality hold for all distributions of the form where Explicitly, this means that a continuous linear map is equal to if and only if the condition below holds: where the right hand side equals

Extensions and restrictions to an open subset

Let be open subsets of Every function can be extended by zero from its domain to a function on by setting it equal to on the complement This extension is a smooth compactly supported function called the trivial extension of to and it will be denoted by This assignment defines the trivial extension operator which is a continuous injective linear map. It is used to canonically identify as a vector subspace of (although not as a topological subspace). Its transpose (explained here) is called the restriction to of distributions in [8] and as the name suggests, the image of a distribution under this map is a distribution on called the restriction of to The defining condition of the restriction is: If then the (continuous injective linear) trivial extension map is not a topological embedding (in other words, if this linear injection was used to identify as a subset of then 's topology would strictly finer than the subspace topology that induces on it; importantly, it would not be a topological subspace since that requires equality of topologies) and its range is also not dense in its codomain [8] Consequently, if then the restriction mapping is neither injective nor surjective. [8] A distribution is said to be extendible to U if it belongs to the range of the transpose of and it is called extendible if it is extendable to [8]

Unless the restriction to is neither injective nor surjective.

Spaces of distributions

For all and all all of the following canonical injections are continuous and have an image/range that is a dense subset of their codomain: [30] [31] where the topologies on the LB-spaces are the canonical LF topologies as defined below (so in particular, they are not the usual norm topologies). The range of each of the maps above (and of any composition of the maps above) is dense in the codomain. Indeed, is even sequentially dense in every [27] For every the canonical inclusion into the normed space (here has its usual norm topology) is a continuous linear injection and the range of this injection is dense in its codomain if and only if . [31]

Suppose that is one of the LF-spaces (for ) or LB-spaces (for ) or normed spaces (for ). [31] Because the canonical injection is a continuous injection whose image is dense in the codomain, this map's transpose is a continuous injection. This injective transpose map thus allows the continuous dual space of to be identified with a certain vector subspace of the space of all distributions (specifically, it is identified with the image of this transpose map). This continuous transpose map is not necessarily a TVS-embedding so the topology that this map transfers from its domain to the image is finer than the subspace topology that this space inherits from A linear subspace of carrying a locally convex topology that is finer than the subspace topology induced by is called a space of distributions. [32] Almost all of the spaces of distributions mentioned in this article arise in this way (e.g. tempered distribution, restrictions, distributions of order some integer, distributions induced by a positive Radon measure, distributions induced by an -function, etc.) and any representation theorem about the dual space of X may, through the transpose be transferred directly to elements of the space

Compactly supported Lp-spaces

Given the vector space of compactly supported functions on and its topology are defined as direct limits of the spaces in a manner analogous to how the canonical LF-topologies on were defined. For any compact let denote the set of all element in (which recall are equivalence class of Lebesgue measurable functions on ) having a representative whose support (which recall is the closure of in ) is a subset of (such an is almost everywhere defined in ). The set is a closed vector subspace and is thus a Banach space and when even a Hilbert space. [30] Let be the union of all as ranges over all compact subsets of The set is a vector subspace of whose elements are the (equivalence classes of) compactly supported functions defined on (or almost everywhere on ). Endow with the final topology (direct limit topology) induced by the inclusion maps as ranges over all compact subsets of This topology is called the canonical LF topology and it is equal to the final topology induced by any countable set of inclusion maps () where are any compact sets with union equal to [30] This topology makes into an LB-space (and thus also an LF-space) with a topology that is strictly finer than the norm (subspace) topology that induces on it.

Radon measures

The inclusion map is a continuous injection whose image is dense in its codomain, so the transpose is also a continuous injection.

Note that the continuous dual space can be identified as the space of Radon measures, where there is a one-to-one correspondence between the continuous linear functionals and integral with respect to a Radon measure; that is,

Through the injection every Radon measure becomes a distribution on U. If is a locally integrable function on U then the distribution is a Radon measure; so Radon measures form a large and important space of distributions.

The following is the theorem of the structure of distributions of Radon measures, which shows that every Radon measure can be written as a sum of derivatives of locally functions in U :

Theorem. [33]   Suppose is a Radon measure, where let be a neighborhood of the support of and let There exists a family of locally functions on U such that for every and Furthermore, is also equal to a finite sum of derivatives of continuous functions on where each derivative has order

Positive Radon measures

A linear function T on a space of functions is called positive if whenever a function that belongs to the domain of T is non-negative (meaning that is real-valued and ) then One may show that every positive linear functional on is necessarily continuous (that is, necessarily a Radon measure). [34] Lebesgue measure is an example of a positive Radon measure.

Locally integrable functions as distributions

One particularly important class of Radon measures are those that are induced locally integrable functions. The function is called locally integrable if it is Lebesgue integrable over every compact subset K of U. [note 15] This is a large class of functions which includes all continuous functions and all Lp space functions. The topology on is defined in such a fashion that any locally integrable function yields a continuous linear functional on – that is, an element of – denoted here by , whose value on the test function is given by the Lebesgue integral:

Conventionally, one abuses notation by identifying with provided no confusion can arise, and thus the pairing between and is often written

If and g are two locally integrable functions, then the associated distributions and Tg are equal to the same element of if and only if and g are equal almost everywhere (see, for instance, Hörmander (1983 , Theorem 1.2.5)). In a similar manner, every Radon measure on U defines an element of whose value on the test function is As above, it is conventional to abuse notation and write the pairing between a Radon measure and a test function as Conversely, as shown in a theorem by Schwartz (similar to the Riesz representation theorem), every distribution which is non-negative on non-negative functions is of this form for some (positive) Radon measure.

Test functions as distributions

The test functions are themselves locally integrable, and so define distributions. The space of test functions is sequentially dense in with respect to the strong topology on [28] This means that for any there is a sequence of test functions, that converges to (in its strong dual topology) when considered as a sequence of distributions. Or equivalently,

Furthermore, is also sequentially dense in the strong dual space of [28]

Distributions with compact support

The inclusion map is a continuous injection whose image is dense in its codomain, so the transpose is also a continuous injection. Thus the image of the transpose, denoted by forms a space of distributions when it is endowed with the strong dual topology of (transferred to it via the transpose map so the topology of is finer than the subspace topology that this set inherits from ). [35]

The elements of can be identified as the space of distributions with compact support. [35] Explicitly, if T is a distribution on U then the following are equivalent,

Compactly supported distributions define continuous linear functionals on the space ; recall that the topology on is defined such that a sequence of test functions converges to 0 if and only if all derivatives of converge uniformly to 0 on every compact subset of U. Conversely, it can be shown that every continuous linear functional on this space defines a distribution of compact support. Thus compactly supported distributions can be identified with those distributions that can be extended from to

Distributions of finite order

Let The inclusion map is a continuous injection whose image is dense in its codomain, so the transpose is also a continuous injection. Consequently, the image of denoted by forms a space of distributions when it is endowed with the strong dual topology of (transferred to it via the transpose map so 's topology is finer than the subspace topology that this set inherits from ). The elements of are the distributions of order [36] The distributions of order which are also called distributions of order are exactly the distributions that are Radon measures (described above).

For a distribution of order is a distribution of order that is not a distribution of order [36]

A distribution is said to be of finite order if there is some integer k such that it is a distribution of order and the set of distributions of finite order is denoted by Note that if then so that is a vector subspace of and furthermore, if and only if [36]

Structure of distributions of finite order

Every distribution with compact support in U is a distribution of finite order. [36] Indeed, every distribution in U is locally a distribution of finite order, in the following sense: [36] If V is an open and relatively compact subset of U and if is the restriction mapping from U to V, then the image of under is contained in

The following is the theorem of the structure of distributions of finite order, which shows that every distribution of finite order can be written as a sum of derivatives of Radon measures:

Theorem [36]   Suppose has finite order and Given any open subset V of U containing the support of T, there is a family of Radon measures in U, such that for very and

Example. (Distributions of infinite order) Let and for every test function let

Then S is a distribution of infinite order on U. Moreover, S can not be extended to a distribution on ; that is, there exists no distribution T on such that the restriction of T to U is equal to T. [37]

Tempered distributions and Fourier transform

Defined below are the tempered distributions, which form a subspace of the space of distributions on This is a proper subspace: while every tempered distribution is a distribution and an element of the converse is not true. Tempered distributions are useful if one studies the Fourier transform since all tempered distributions have a Fourier transform, which is not true for an arbitrary distribution in

Schwartz space

The Schwartz space, is the space of all smooth functions that are rapidly decreasing at infinity along with all partial derivatives. Thus is in the Schwartz space provided that any derivative of multiplied with any power of converges to 0 as These functions form a complete TVS with a suitably defined family of seminorms. More precisely, for any multi-indices and define:

Then is in the Schwartz space if all the values satisfy:

The family of seminorms defines a locally convex topology on the Schwartz space. For the seminorms are, in fact, norms on the Schwartz space. One can also use the following family of seminorms to define the topology: [38]

Otherwise, one can define a norm on via

The Schwartz space is a Fréchet space (i.e. a complete metrizable locally convex space). Because the Fourier transform changes into multiplication by and vice versa, this symmetry implies that the Fourier transform of a Schwartz function is also a Schwartz function.

A sequence in converges to 0 in if and only if the functions converge to 0 uniformly in the whole of which implies that such a sequence must converge to zero in [38]

is dense in The subset of all analytic Schwartz functions is dense in as well. [39]

The Schwartz space is nuclear and the tensor product of two maps induces a canonical surjective TVS-isomorphisms where represents the completion of the injective tensor product (which in this case is the identical to the completion of the projective tensor product). [40]

Tempered distributions

The inclusion map is a continuous injection whose image is dense in its codomain, so the transpose is also a continuous injection. Thus, the image of the transpose map, denoted by forms a space of distributions when it is endowed with the strong dual topology of (transferred to it via the transpose map so the topology of is finer than the subspace topology that this set inherits from ).

The space is called the space of tempered distributions. It is the continuous dual of the Schwartz space. Equivalently, a distribution T is a tempered distribution if and only if

The derivative of a tempered distribution is again a tempered distribution. Tempered distributions generalize the bounded (or slow-growing) locally integrable functions; all distributions with compact support and all square-integrable functions are tempered distributions. More generally, all functions that are products of polynomials with elements of Lp space for are tempered distributions.

The tempered distributions can also be characterized as slowly growing, meaning that each derivative of T grows at most as fast as some polynomial. This characterization is dual to the rapidly falling behaviour of the derivatives of a function in the Schwartz space, where each derivative of decays faster than every inverse power of An example of a rapidly falling function is for any positive

Fourier transform

To study the Fourier transform, it is best to consider complex-valued test functions and complex-linear distributions. The ordinary continuous Fourier transform is a TVS-automorphism of the Schwartz space, and the Fourier transform is defined to be its transpose which (abusing notation) will again be denoted by F. So the Fourier transform of the tempered distribution T is defined by for every Schwartz function is thus again a tempered distribution. The Fourier transform is a TVS isomorphism from the space of tempered distributions onto itself. This operation is compatible with differentiation in the sense that and also with convolution: if T is a tempered distribution and is a slowly increasing smooth function on is again a tempered distribution and is the convolution of and . In particular, the Fourier transform of the constant function equal to 1 is the distribution.

Expressing tempered distributions as sums of derivatives

If is a tempered distribution, then there exists a constant and positive integers M and N such that for all Schwartz functions

This estimate along with some techniques from functional analysis can be used to show that there is a continuous slowly increasing function F and a multi-index such that

Restriction of distributions to compact sets

If then for any compact set there exists a continuous function F compactly supported in (possibly on a larger set than K itself) and a multi-index such that on

Tensor product of distributions

Let and be open sets. Assume all vector spaces to be over the field where or For define for every and every the following functions:

Given and define the following functions: where and These definitions associate every and with the (respective) continuous linear map:

Moreover, if either (resp. ) has compact support then it also induces a continuous linear map of (resp. ). [41]

Fubini's theorem for distributions [41]   Let and If then

The tensor product of and denoted by or is the distribution in defined by: [41]

Schwartz kernel theorem

The tensor product defines a bilinear map the span of the range of this map is a dense subspace of its codomain. Furthermore, [41] Moreover induces continuous bilinear maps: where denotes the space of distributions with compact support and is the Schwartz space of rapidly decreasing functions. [14]

Schwartz kernel theorem [40]   Each of the canonical maps below (defined in the natural way) are TVS isomorphisms: Here represents the completion of the injective tensor product (which in this case is identical to the completion of the projective tensor product, since these spaces are nuclear) and has the topology of uniform convergence on bounded subsets.

This result does not hold for Hilbert spaces such as and its dual space. [42] Why does such a result hold for the space of distributions and test functions but not for other "nice" spaces like the Hilbert space ? This question led Alexander Grothendieck to discover nuclear spaces, nuclear maps, and the injective tensor product. He ultimately showed that it is precisely because is a nuclear space that the Schwartz kernel theorem holds. Like Hilbert spaces, nuclear spaces may be thought as of generalizations of finite dimensional Euclidean space.

Using holomorphic functions as test functions

The success of the theory led to investigation of the idea of hyperfunction, in which spaces of holomorphic functions are used as test functions. A refined theory has been developed, in particular Mikio Sato's algebraic analysis, using sheaf theory and several complex variables. This extends the range of symbolic methods that can be made into rigorous mathematics, for example Feynman integrals.

See also

Notes

  1. The Schwartz space consists of smooth rapidly decreasing test functions, where "rapidly decreasing" means that the function decreases faster than any polynomial increases as points in its domain move away from the origin.
  2. Except for the trivial (i.e. identically ) map, which of course is always analytic.
  3. Note that being an integer implies This is sometimes expressed as Since the inequality "" means: if while if then it means
  4. The image of the compact set under a continuous -valued map (for example, for ) is itself a compact, and thus bounded, subset of If then this implies that each of the functions defined above is -valued (that is, none of the supremums above are ever equal to ).
  5. If we take to be the set of all compact subsets of U then we can use the universal property of direct limits to conclude that the inclusion is a continuous and even that they are topological embedding for every compact subset If however, we take to be the set of closures of some countable increasing sequence of relatively compact open subsets of U having all of the properties mentioned earlier in this in this article then we immediately deduce that is a Hausdorff locally convex strict LF-space (and even a strict LB-space when ). All of these facts can also be proved directly without using direct systems (although with more work).
  6. For any TVS X (metrizable or otherwise), the notion of completeness depends entirely on a certain so-called "canonical uniformity" that is defined using only the subtraction operation (see the article Complete topological vector space for more details). In this way, the notion of a complete TVS does not require the existence of any metric. However, if the TVS X is metrizable and if is any translation-invariant metric on X that defines its topology, then X is complete as a TVS (i.e. it is a complete uniform space under its canonical uniformity) if and only if is a complete metric space. So if a TVS X happens to have a topology that can be defined by such a metric d then d may be used to deduce the completeness of X but the existence of such a metric is not necessary for defining completeness and it is even possible to deduce that a metrizable TVS is complete without ever even considering a metric (e.g. since the Cartesian product of any collection of complete TVSs is again a complete TVS, we can immediately deduce that the TVS which happens to be metrizable, is a complete TVS; note that there was no need to consider any metric on ).
  7. One reason for giving the canonical LF topology is because it is with this topology that and its continuous dual space both become nuclear spaces, which have many nice properties and which may be viewed as a generalization of finite-dimensional spaces (for comparison, normed spaces are another generalization of finite-dimensional spaces that have many "nice" properties). In more detail, there are two classes of topological vector spaces (TVSs) that are particularly similar to finite-dimensional Euclidean spaces: the Banach spaces (especially Hilbert spaces) and the nuclear Montel spaces. Montel spaces are a class of TVSs in which every closed and bounded subset is compact (this generalizes the Heine–Borel theorem), which is a property that no infinite-dimensional Banach space can have; that is, no infinite-dimensional TVS can be both a Banach space and a Montel space. Also, no infinite-dimensional TVS can be both a Banach space and a nuclear space. All finite dimensional Euclidean spaces are nuclear Montel Hilbert spaces but once one enters infinite-dimensional space then these two classes separate. Nuclear spaces in particular have many of the "nice" properties of finite-dimensional TVSs (e.g. the Schwartz kernel theorem) that infinite-dimensional Banach spaces lack (for more details, see the properties, sufficient conditions, and characterizations given in the article Nuclear space). It is in this sense that nuclear spaces are an "alternative generalization" of finite-dimensional spaces. Also, as a general rule, in practice most "naturally occurring" TVSs are usually either Banach spaces or nuclear space. Typically, most TVSs that are associated with smoothness (i.e. infinite differentiability, such as and ) end up being nuclear TVSs while TVSs associated with finite continuous differentiability (such as with K compact and ) often end up being non-nuclear spaces, such as Banach spaces.
  8. Even though the topology of is not metrizable, a linear functional on is continuous if and only if it is sequentially continuous.
  9. 1 2 A null sequence is a sequence that converges to the origin.
  10. 1 2 A sequence is said to be Mackey convergent to 0 in if there exists a divergent sequence of positive real number such that is a bounded set in
  11. If is also a directed set under the usual function comparison then we can take the finite collection to consist of a single element.
  12. In functional analysis, the strong dual topology is often the "standard" or "default" topology placed on the continuous dual space where if X is a normed space then this strong dual topology is the same as the usual norm-induced topology on
  13. Technically, the topology must be coarser than the strong dual topology and also simultaneously be finer that the weak* topology.
  14. Recall that a linear map is bounded if and only if it maps null sequences to bounded sequences.
  15. For more information on such class of functions, see the entry on locally integrable functions.

Related Research Articles

In mathematics, more specifically in functional analysis, a Banach space is a complete normed vector space. Thus, a Banach space is a vector space with a metric that allows the computation of vector length and distance between vectors and is complete in the sense that a Cauchy sequence of vectors always converges to a well-defined limit that is within the space.

In mathematics, a topological vector space is one of the basic structures investigated in functional analysis. A topological vector space is a vector space that is also a topological space with the property that the vector space operations are also continuous functions. Such a topology is called a vector topology and every topological vector space has a uniform topological structure, allowing a notion of uniform convergence and completeness. Some authors also require that the space is a Hausdorff space. One of the most widely studied categories of TVSs are locally convex topological vector spaces. This article focuses on TVSs that are not necessarily locally convex. Other well-known examples of TVSs include Banach spaces, Hilbert spaces and Sobolev spaces.

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In the area of mathematics known as functional analysis, a reflexive space is a locally convex topological vector space for which the canonical evaluation map from into its bidual is a homeomorphism. A normed space is reflexive if and only if this canonical evaluation map is surjective, in which case this evaluation map is an isometric isomorphism and the normed space is a Banach space. Those spaces for which the canonical evaluation map is surjective are called semi-reflexive spaces.

In functional analysis and related areas of mathematics, Fréchet spaces, named after Maurice Fréchet, are special topological vector spaces. They are generalizations of Banach spaces. All Banach and Hilbert spaces are Fréchet spaces. Spaces of infinitely differentiable functions are typical examples of Fréchet spaces, many of which are typically not Banach spaces.

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 X 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 structure, hence the name function space.

In functional analysis and related areas of mathematics, locally convex topological vector spaces (LCTVS) or locally convex spaces are examples of topological vector spaces (TVS) that generalize normed spaces. They can be defined as topological vector spaces whose topology is generated by translations of balanced, absorbent, convex sets. Alternatively they can be defined as a vector space with a family of seminorms, and a topology can be defined in terms of that family. Although in general such spaces are not necessarily normable, the existence of a convex local base for the zero vector is strong enough for the Hahn–Banach theorem to hold, yielding a sufficiently rich theory of continuous linear functionals.

In functional analysis and related branches of mathematics, the Banach–Alaoglu theorem states that the closed unit ball of the dual space of a normed vector space is compact in the weak* topology. A common proof identifies the unit ball with the weak-* topology as a closed subset of a product of compact sets with the product topology. As a consequence of Tychonoff's theorem, this product, and hence the unit ball within, is compact.

In linear algebra and related areas of mathematics a balanced set, circled set or disk in a vector space is a set such that for all scalars satisfying

In general topology and related areas of mathematics, the final topology on a set with respect to a family of functions from topological spaces into is the finest topology on that makes all those functions continuous.

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<span class="mw-page-title-main">Filters in topology</span> Use of filters to describe and characterize all basic topological notions and results.

Filters in topology, a subfield of mathematics, can be used to study topological spaces and define all basic topological notions such as convergence, continuity, compactness, and more. Filters, which are special families of subsets of some given set, also provide a common framework for defining various types of limits of functions such as limits from the left/right, to infinity, to a point or a set, and many others. Special types of filters called ultrafilters have many useful technical properties and they may often be used in place of arbitrary filters.

In functional analysis and related areas of mathematics, a complete topological vector space is a topological vector space (TVS) with the property that whenever points get progressively closer to each other, then there exists some point towards which they all get closer. The notion of "points that get progressively closer" is made rigorous by Cauchy nets or Cauchy filters, which are generalizations of Cauchy sequences, while "point towards which they all get closer" means that this Cauchy net or filter converges to The notion of completeness for TVSs uses the theory of uniform spaces as a framework to generalize the notion of completeness for metric spaces. But unlike metric-completeness, TVS-completeness does not depend on any metric and is defined for all TVSs, including those that are not metrizable or Hausdorff.

The theorem on the surjection of Fréchet spaces is an important theorem, due to Stefan Banach, that characterizes when a continuous linear operator between Fréchet spaces is surjective.

In mathematics, the injective tensor product of two topological vector spaces (TVSs) was introduced by Alexander Grothendieck and was used by him to define nuclear spaces. An injective tensor product is in general not necessarily complete, so its completion is called the completed injective tensor products. Injective tensor products have applications outside of nuclear spaces. In particular, as described below, up to TVS-isomorphism, many TVSs that are defined for real or complex valued functions, for instance, the Schwartz space or the space of continuously differentiable functions, can be immediately extended to functions valued in a Hausdorff locally convex TVS without any need to extend definitions from real/complex-valued functions to -valued functions.

In the mathematical discipline of functional analysis, a differentiable vector-valued function from Euclidean space is a differentiable function valued in a topological vector space (TVS) whose domains is a subset of some finite-dimensional Euclidean space. It is possible to generalize the notion of derivative to functions whose domain and codomain are subsets of arbitrary topological vector spaces (TVSs) in multiple ways. But when the domain of a TVS-valued function is a subset of a finite-dimensional Euclidean space then many of these notions become logically equivalent resulting in a much more limited number of generalizations of the derivative and additionally, differentiability is also more well-behaved compared to the general case. This article presents the theory of -times continuously differentiable functions on an open subset of Euclidean space , which is an important special case of differentiation between arbitrary TVSs. This importance stems partially from the fact that every finite-dimensional vector subspace of a Hausdorff topological vector space is TVS isomorphic to Euclidean space so that, for example, this special case can be applied to any function whose domain is an arbitrary Hausdorff TVS by restricting it to finite-dimensional vector subspaces.

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

References

  1. 1 2 Trèves 2006, pp. 222–223.
  2. 1 2 See for example Grubb 2009 , p. 14.
  3. 1 2 Trèves 2006, pp. 85–89.
  4. 1 2 Trèves 2006, pp. 142–149.
  5. Trèves 2006, pp. 356–358.
  6. 1 2 Rudin 1991, pp. 149–181.
  7. 1 2 3 4 Trèves 2006, pp. 131–134.
  8. 1 2 3 4 5 6 7 8 Trèves 2006, pp. 245–247.
  9. 1 2 Trèves 2006, pp. 247–252.
  10. Trèves 2006, pp. 126–134.
  11. 1 2 3 Trèves 2006, pp. 136–148.
  12. Rudin 1991, pp. 149–155.
  13. Narici & Beckenstein 2011, pp. 446–447.
  14. 1 2 Trèves 2006, p. 423.
  15. See for example Schaefer & Wolff 1999 , p. 173.
  16. 1 2 3 4 5 Gabriyelyan, Saak "Topological properties of Strict LF-spaces and strong duals of Montel Strict LF-spaces" (2017)
  17. 1 2 Gabriyelyan, S.S. Kakol J., and·Leiderman, A. "The strong Pitkeev property for topological groups and topological vector spaces"
  18. Trèves 2006, pp. 195–201.
  19. Narici & Beckenstein 2011, p. 435.
  20. Trèves 2006, pp. 526–534.
  21. Trèves 2006, p. 357.
  22. "Topological vector space". Encyclopedia of Mathematics. Retrieved September 6, 2020. It is a Montel space, hence paracompact, and so normal.
  23. 1 2 T. Shirai, Sur les Topologies des Espaces de L. Schwartz, Proc. Japan Acad. 35 (1959), 31-36.
  24. According to Gel'fand & Shilov 1966–1968 , v. 1, §1.2
  25. Trèves 2006, pp. 351–359.
  26. Narici & Beckenstein 2011, pp. 441–457.
  27. 1 2 Trèves 2006, pp. 150–160.
  28. 1 2 3 4 Trèves 2006, pp. 300–304.
  29. Strichartz 1994 , §2.3; Trèves 2006.
  30. 1 2 3 Trèves 2006, pp. 131–135.
  31. 1 2 3 Trèves 2006, pp. 240–245.
  32. Trèves 2006, pp. 240–252.
  33. Trèves 2006, pp. 262–264.
  34. Trèves 2006, p. 218.
  35. 1 2 3 Trèves 2006, pp. 255–257.
  36. 1 2 3 4 5 6 Trèves 2006, pp. 258–264.
  37. Rudin 1991, pp. 177–181.
  38. 1 2 Trèves 2006, pp. 92–94.
  39. Trèves 2006, pp. 160.
  40. 1 2 Trèves 2006, p. 531.
  41. 1 2 3 4 Trèves 2006, pp. 416–419.
  42. Trèves 2006, pp. 509–510.

Bibliography

Further reading