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Bochner's theorem

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In mathematics, Bochner's theorem (named for Salomon Bochner) characterizes the Fourier transform of a positive finite Borel measure on the real line. More generally in harmonic analysis, Bochner's theorem asserts that under Fourier transform a continuous positive-definite function on a locally compact abelian group corresponds to a finite positive measure on the Pontryagin dual group. The case of sequences was first established by Gustav Herglotz (see also the related Herglotz representation theorem.)[1]

The theorem for locally compact abelian groups

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Bochner's theorem for a locally compact abelian group , with dual group , says the following:

Theorem For any normalized continuous positive-definite function on (normalization here means that is 1 at the unit of ), there exists a unique probability measure on such that

i.e. is the Fourier transform of a unique probability measure on . Conversely, the Fourier transform of a probability measure on is necessarily a normalized continuous positive-definite function on . This is in fact a one-to-one correspondence.

The Gelfand–Fourier transform is an isomorphism between the group C*-algebra and . The theorem is essentially the dual statement for states of the two abelian C*-algebras.

The proof of the theorem passes through vector states on strongly continuous unitary representations of (the proof in fact shows that every normalized continuous positive-definite function must be of this form).

Given a normalized continuous positive-definite function on , one can construct a strongly continuous unitary representation of in a natural way: Let be the family of complex-valued functions on with finite support, i.e. for all but finitely many . The positive-definite kernel induces a (possibly degenerate) inner product on . Quotienting out degeneracy and taking the completion gives a Hilbert space

whose typical element is an equivalence class . For a fixed in , the "shift operator" defined by , for a representative of , is unitary. So the map

is a unitary representations of on . By continuity of , it is weakly continuous, therefore strongly continuous. By construction, we have

where is the class of the function that is 1 on the identity of and zero elsewhere. But by Gelfand–Fourier isomorphism, the vector state on is the pull-back of a state on , which is necessarily integration against a probability measure . Chasing through the isomorphisms then gives

On the other hand, given a probability measure on , the function

is a normalized continuous positive-definite function. Continuity of follows from the dominated convergence theorem. For positive-definiteness, take a nondegenerate representation of . This extends uniquely to a representation of its multiplier algebra and therefore a strongly continuous unitary representation . As above we have given by some vector state on

therefore positive-definite.

The two constructions are mutual inverses.

Special cases

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Bochner's theorem in the special case of the discrete group is often referred to as Herglotz's theorem (see Herglotz representation theorem) and says that a function on with is positive-definite if and only if there exists a probability measure on the circle such that

Similarly, a continuous function on with is positive-definite if and only if there exists a probability measure on such that

Applications

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In statistics, Bochner's theorem can be used to describe the serial correlation of certain type of time series. A sequence of random variables of mean 0 is a (wide-sense) stationary time series if the covariance

only depends on . The function

is called the autocovariance function of the time series. By the mean zero assumption,

where denotes the inner product on the Hilbert space of random variables with finite second moments. It is then immediate that is a positive-definite function on the integers . By Bochner's theorem, there exists a unique positive measure on such that

This measure is called the spectral measure of the time series. It yields information about the "seasonal trends" of the series.

For example, let be an -th root of unity (with the current identification, this is ) and be a random variable of mean 0 and variance 1. Consider the time series . The autocovariance function is

Evidently, the corresponding spectral measure is the Dirac point mass centered at . This is related to the fact that the time series repeats itself every periods.

When has sufficiently fast decay, the measure is absolutely continuous with respect to the Lebesgue measure, and its Radon–Nikodym derivative is called the spectral density of the time series. When lies in , is the Fourier transform of .

See also

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Notes

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  1. ^ William Feller, Introduction to probability theory and its applications, volume 2, Wiley, p. 634

References

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  • Loomis, L. H. (1953), An introduction to abstract harmonic analysis, Van Nostrand
  • M. Reed and Barry Simon, Methods of Modern Mathematical Physics, vol. II, Academic Press, 1975.
  • Rudin, W. (1990), Fourier analysis on groups, Wiley-Interscience, ISBN 0-471-52364-X