DISTRIBUTION (MATHEMATICS)

:''This page is about generalized functions in mathematical analysis. For the probability meaning see probability distribution. For other meanings see distribution (disambiguation).''
In mathematical analysis, 'distributions' (also known as 'generalized functions') are objects which generalize functions and probability distributions. They extend the concept of derivative to all integrable functions and beyond, and are used to formulate generalized solutions of partial differential equations. They are important in physics and engineering where many non-continuous problems naturally lead to differential equations whose solutions are distributions, such as the Dirac delta distribution.
"Generalized functions" were introduced by Sergei Sobolev in 1935. They were independently introduced in late 1940s by Laurent Schwartz, who developed a comprehensive theory of distributions.

Contents
Basic idea
Formal definition
Distributions as derivatives of continuous functions
Compact support and convolution
Tempered distributions and Fourier transform
Using holomorphic functions as test functions
Problem of multiplication
See also
References

Basic idea


The basic idea is to identify functions with abstract linear functionals on a space of unproblematic ''test functions'' (conventional and well-behaved functions). Operators on distributions can be understood by moving them to the test function.
For example, if
:''f'' : 'R' → 'R'
is a locally integrable function, and
:φ : 'R' → 'R'
is a smooth (that is, infinitely differentiable) function with compact support (so, identically zero outside of some bounded set), then we set
: leftlangle f, arphi
ight
angle = int_mathbf{R} f arphi ,dx .
This is a real number which linearly and continuously depends on φ. One can therefore think of the function ''f'' as a continuous linear functional on the space which consists of all the "test functions" φ.
Similarly, if ''P'' is a probability distribution on the reals and φ is a test function, then
: leftlangle P, arphi
ight
angle = int_{mathbf{R}} arphi, dP
is a real number that continuously and linearly depends on φ: probability distributions can thus also be viewed as continuous linear functionals on the space of test functions. This notion of "continuous linear functional on the space of test functions" is therefore used as the definition of a distribution.
Such distributions may be multiplied with real numbers and can be added together, so they form a real vector space. In general it is not possible to define a multiplication for distributions, but distributions may be multiplied with infinitely differentiable functions.
To define the derivative of a distribution, we first consider the case of a differentiable and integrable function ''f'' : 'R' → 'R'. If φ is a test function, then we have
:int_{mathbf{R}}{}{f' arphi ,dx} = - int_{mathbf{R}}{}{f arphi' ,dx}
using integration by parts (note that φ is zero outside of a bounded set and that therefore no boundary values have to be taken into account). This suggests that if ''S'' is a ''distribution'', we should define its derivative S' by
: leftlangle S', arphi
ight
angle = - leftlangle S, arphi'
ight
angle.
It turns out that this is the proper definition; it extends the ordinary definition of derivative, every distribution becomes infinitely differentiable and the usual properties of derivatives hold.
'Example:' The Dirac delta (so-called Dirac delta function) is the distribution defined by
: leftlangle delta, arphi
ight
angle = arphi(0)
It is the derivative of the Heaviside step function: For any test function arphi,
: leftlangle H', arphi
ight
angle = - leftlangle H, arphi'
ight
angle = - int_{-infty}^{infty} H(x) arphi'(x) dx = - int_{0}^{infty} arphi'(x) dx = arphi(0) = leftlangle delta, arphi
ight
angle,
so H' = delta. Similarly, the derivative of the Dirac delta is the distribution
:delta'( arphi)= - arphi'(0).
This latter distribution is our first example of a distribution which is neither a function nor a probability distribution.

Formal definition


In the sequel, real-valued distributions on an open subset ''U'' of 'R'''n'' will be formally defined. (With minor modifications, one can also define complex-valued distributions, and one can replace 'R'''n'' by any smooth manifold.) First, the space D(''U'') of 'test functions' on ''U'' needs to be explained. A function φ : ''U'' → 'R' is said to have ''compact support'' if there exists a compact subset ''K'' of ''U'' such that φ(''x'') = 0 for all ''x'' in ''U'' ''K''. The elements of D(''U'') are the infinitely often differentiable functions φ : ''U'' → 'R' with compact support. This is a real vector space. We turn it into a topological vector space by stipulating that a sequence (or net) (φ''k'') converges to 0 if and only if there exists a compact subset ''K'' of ''U'' such that all φ''k'' are identically zero outside ''K'', and for every ε > 0 and natural number ''d'' ≥ 0 there exists a natural number ''k''0 such that for all ''k'' ≥ ''k''0 the absolute value of all ''d''-th derivatives of φ''k'' is smaller than ε. With this definition, D(''U'') becomes a complete topological vector space (in fact, a so-called LF-space).
The dual space of the topological vector space D(''U''), consisting of all continuous linear functionals ''S'' : D(''U'') → 'R', is the space of all 'distributions' on ''U''; it is a vector space and is denoted by D'(''U''). The dual pairing between a distribution ''S'' in D′(''U'') and a test function ''φ'' in D(''U'') is denoted using angle brackets thus:
:mathrm{D}'(U) imes mathrm{D}(U)
i (S, arphi) mapsto langle S, arphi
angle in mathbf{R}.
The function ''f'' : ''U'' → 'R' is called 'locally integrable' if it is Lebesgue integrable over every compact subset ''K'' of ''U''. This is a large class of functions which includes all continuous functions. The topology on D(''U'') is defined in such a fashion that any locally integrable function ''f'' yields a continuous linear functional on D(''U'') whose value on the test function φ is given by the Lebesgue integral ∫''U'' ''f''φ d''x''. Two locally integrable functions ''f'' and ''g'' yield the same element of D'(''U'') if and only if they are equal almost everywhere. Similarly, every Radon measure μ on ''U'' (which includes the probability distributions) defines an element of D'(''U'') whose value on the test function φ is ∫φ dμ.
As mentioned above, integration by parts suggests that the derivative ∂''S''/∂''x''''k'' of the distribution ''S'' in the direction ''x''''k'' should be defined using the formula
:leftlangle rac{partial S}{partial x_{k}}, arphi
ight
angle = - leftlangle S, rac{partial arphi}{partial x_{k}}
ight
angle
for all test functions ''φ''. In this way, every distribution is infinitely differentiable, and the derivative in the direction ''x''''k'' is a linear operator on D′(''U''). In general, if ''α'' = (''α''1, ..., ''α''''n'') is an arbitrary multi-index and ∂''α'' denotes the associated mixed partial derivative operator, the mixed partial derivative ∂''α''''S'' of the distribution ''S'' ∈ D′(''U'') is defined by
:leftlangle partial^{lpha} S, arphi
ight
angle = (-1)^
leftlangle S, partial^{lpha} arphi
ight
angle mbox{ for all } arphi in mathrm{D}'(U).
The space D'(''U'') is turned into a locally convex topological vector space by defining that the sequence (''S''''k'') converges towards 0 if and only if ''S''''k''(φ) → 0 for all test functions φ; this topology is called the weak-
★ topology. This is the case if and only if ''S''''k'' converges uniformly to 0 on all bounded subsets of D(''U''). (A subset of ''E'' of D(''U'') is bounded if there exists a compact subset ''K'' of ''U'' and numbers ''d''''n'' such that every φ in ''E'' has its support in ''K'' and has its ''n''-th derivatives bounded by ''d''''n''.) With respect to this topology, differentiation of distributions is a continuous operator; this is an important and desirable property that is not shared by most other notions of differentiation. Furthermore, the test functions (which can themselves be viewed as distributions) are dense in D'(''U'') with respect to this topology.
If ψ : ''U'' → 'R' is an infinitely often differentiable function and ''S'' is a distribution on ''U'', we define the product ''S''ψ by (''S''ψ)(φ) = ''S''(ψφ) for all test functions φ. The ordinary product rule of calculus remains valid.

Distributions as derivatives of continuous functions


The formal definition of distributions exhibits them as a subspace of a very large space, namely the algebraic dual of D(''U''). It is not immediately clear from the definition how exotic a distribution might be. To answer this question, it is instructive to see distributions built up from a smaller space, namely the space of continuous functions. Roughly, any distribution is locally a (multiple) derivative of a continuous function. (The precise theorem is below.) In other words, no proper subset of the space of distributions contains all continuous functions and is closed under differentiation. This says that distributions are not particularly exotic objects; they are only as complicated as necessary.
One precise version of the theorem is the following.[1] Let ''S'' be a distribution on ''U''. Then for every multi-index α, there exists a continuous function ''g''α such that any compact subset ''K'' of ''U'' intersects the supports of only finitely many ''gα'', and such that
: displaystyle S = sum_{lpha} D^{lpha} g_{lpha}.

Compact support and convolution


We say that a distribution ''S'' has 'compact support' if there is a compact subset ''K'' of ''U'' such that for every test function φ whose support is completely outside of ''K'', we have ''S''(φ) = 0. Alternatively, one may define distributions with compact support as continuous linear functionals on the space C(''U''); the topology on C(''U'') is defined such that φ''k'' converges to 0 if and only if all derivatives of φ''k'' converge uniformly to 0 on every compact subset of ''U''.
If both ''S'' and ''T'' are distributions on 'R'''n'' and one of them has compact support, then one can define a new distribution, the 'convolution' ''S'' ∗ ''T'' of ''S'' and ''T'', as follows: if φ is a test function in D('R'''n'') and ''x'', ''y'' elements of 'R'''n'', write φ''x''(''y'') = φ (''x'' + ''y''), ψ(''x'') = ''T''(φ''x'') and (''S'' ∗ ''T'') (φ) = ''S''(ψ).
This generalizes the classical notion of convolution of functions and is compatible with differentiation in the following sense:
:d/d''x'' (''S'' ∗ ''T'') = (d/d''x'' ''S'') ∗ ''T'' = ''S'' ∗ (d/d''x'' ''T'').
This definition of convolution remains valid under less restrictive assumptions about ''S'' and ''T''. [2][3]

Tempered distributions and Fourier transform


By using a larger space of test functions, one can define the 'tempered distributions', a subspace of D'('R'''n''). These distributions are useful if one studies the Fourier transform in generality: all tempered distributions have a Fourier transform, but not all distributions have one.
The space of test functions employed here, the so-called Schwartz space, is the space of all infinitely differentiable rapidly decreasing functions, where φ : 'R'''n'' → 'R' is called ''rapidly decreasing'' if any derivative of φ, multiplied with any power of |''x''|, converges towards 0 for |''x''| → ∞. These functions form a complete topological vector space with a suitably defined family of seminorms. More precisely, let
: p_{lpha , eta} (phi) = sup_{x in mathbf{R}^n} | x^lpha D^eta phi(x)|
for α, β multi-indices of size ''n''. Then φ is 'rapidly-decreasing' if all the values
: p_{lpha, eta} (phi) < infty
The family of seminorms ''p''α, β defines a locally convex topology on the Schwartz-space. It is metrizable and complete.
The space of 'tempered distributions' is defined as the dual of the Schwartz space. In other words, a distribution ''F'' is a tempered distribution if and only if
: lim_{n oinfty}sup_{x in mathbf{R}^n} | x^lpha D^eta phi_n(x)| = 0
for all multi-indices α, β implies
: lim_{n oinfty} F(phi_n)=0.
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. All locally integrable functions ''f'' with at most polynomial growth, i.e. such that ''f(x)=O(|x|r)'' for some ''r'', are tempered distributions.
To study the Fourier transform, it is best to consider ''complex''-valued test functions and complex-linear distributions. The ordinary continuous Fourier transform ''F'' yields then an automorphism of Schwartz-space, and we can define the 'Fourier transform' of the tempered distribution ''S'' by (''FS'')(φ) = ''S''(''F''φ) for every test function φ. ''FS'' is thus again a tempered distribution. The Fourier transform is a continuous, linear, bijective operator from the space of tempered distributions to itself. This operation is compatible with differentiation in the sense that
:''F'' (d/d''x'' ''S'') = ''ix'' ''FS''
and also with convolution: if ''S'' is a tempered distribution and ψ is a ''slowly increasing'' infinitely differentiable function on 'R'''n'' (meaning that all derivatives of ψ grow at most as fast as polynomials), then ''S''ψ is again
a tempered distribution and
:''F''(''S''ψ) = ''FS'' ∗ ''F''ψ.

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 by Mikio Sato, 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.

Problem of multiplication


The main problem of the theory of distributions (and hyperfunctions) is that it is a purely linear theory, in the sense that the product of two distributions cannot consistently be defined (in general), as has been proved by Laurent Schwartz in the 1950s.
Thus, nonlinear problems cannot be posed and thus not solved in distribution theory.
In the context of quantum field theory, the non-respect of this fact is one of the sources of the "divergencies". Although in the context of the latter theory, Henri Epstein and Vladimir Glaser developed the mathematically rigorous (but extremely technical) ''causal perturbation theory'', this does not solve the problem in other situations. Many other interesting theories are non linear, like for example Navier-Stokes equations of fluid dynamics.
In view of this, several theories of 'algebras' of generalized functions have been developed, among which Colombeau's (simplified) algebra is maybe the most popular in use today.

See also



generalized function

Colombeau algebra

Weak solution

References



★ M. J. Lighthill (1958). ''Introduction to Fourier Analysis and Generalized Functions''. Cambridge University Press. ISBN 0-521-09128-4 (defines distributions as limits of sequences of functions under integrals)

★ L. Schwartz (1954), ''Sur l'impossibilité de la multiplications des distributions'', C.R.Acad. Sci. Paris '239', pp 847-848.
1. Walter Rudin, ''Functional Analysis'' (second edition), McGraw-Hill, 1991, ISBN 0-07-054236-8.
2. I.M. Gel'fand and G.E. Shilov, Generalized Functions, v. 1, Academic Press, 1964, pp. 103--104.
3. J.J. Benedetto, Harmonic Analysis and Applications, CRC Press, 1997, Definition 2.5.8.


This article provided by Wikipedia. To edit the contents of this article, click here for original source.

psst.. try this: add to faves