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Dependence In Probability And Statistics 1st Edition Istvn Berkes

  • SKU: BELL-2042490
Dependence In Probability And Statistics 1st Edition Istvn Berkes
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Dependence In Probability And Statistics 1st Edition Istvn Berkes instant download after payment.

Publisher: Springer-Verlag Berlin Heidelberg
File Extension: PDF
File size: 1.55 MB
Pages: 205
Author: István Berkes, Lajos Horváth, Johannes Schauer (auth.), Paul Doukhan, Gabriel Lang, Donatas Surgailis, Gilles Teyssière (eds.)
ISBN: 9783642141034, 364214103X
Language: English
Year: 2010
Edition: 1

Product desciption

Dependence In Probability And Statistics 1st Edition Istvn Berkes by István Berkes, Lajos Horváth, Johannes Schauer (auth.), Paul Doukhan, Gabriel Lang, Donatas Surgailis, Gilles Teyssière (eds.) 9783642141034, 364214103X instant download after payment.

This volume collects recent works on weakly dependent, long-memory and multifractal processes and introduces new dependence measures for studying complex stochastic systems. Other topics include the statistical theory for bootstrap and permutation statistics for infinite variance processes, the dependence structure of max-stable processes, and the statistical properties of spectral estimators of the long memory parameter. The asymptotic behavior of Fejér graph integrals and their use for proving central limit theorems for tapered estimators are investigated. New multifractal processes are introduced and their multifractal properties analyzed. Wavelet-based methods are used to study multifractal processes with different multiresolution quantities, and to detect changes in the variance of random processes. Linear regression models with long-range dependent errors are studied, as is the issue of detecting changes in their parameters.

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