Rates of convergence in a central limit theorem for stochastic processes defined by differential equations with a small parameter
Let [mu] be a positive finite Borel measure on the real line R. For t >= 0 let et · E1 and E2 denote, respectively, the linear spans in L2(R, [mu]) of {eisx, s > t} and {eisx, s < 0}. Let [theta]: R --> C such that [short parallel][theta][short parallel] = 1, denote by [alpha]t([theta], [mu]) the angle between [theta] · et · E1 and E2. The problems considered here are that of describing those measures [mu] for which (1) [alpha]t([theta], [mu]) > 0, (2) [alpha]t([theta], [mu]) --> [pi]/2 as t --> [infinity] (such [mu] arise as the spectral measures of strongly mixing stationary Gaussian processes), and (3) give necessary and sufficient conditions for the rate of convergence of the generalized maximal correlation coefficient: [varrho]t([theta], [mu]) = cos [alpha]t([theta], [mu]). Using this coefficient we characterize the stationary continuous processes that are (a) completely regular and (b) strongly mixing Gaussian. We also give necessary and sufficient conditions for the rate of convergence of (a) the maximal correlation coefficient and (b) the mixing coefficient in the Gaussian case.
Year of publication: |
1992
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Authors: | Kouritzin, M. A. ; Heunis, A. J. |
Published in: |
Journal of Multivariate Analysis. - Elsevier, ISSN 0047-259X. - Vol. 43.1992, 1, p. 58-109
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Publisher: |
Elsevier |
Keywords: | functional central limit theorem strong mixing non-stationary stochastic processes averaging principle Prohorov distance |
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