Workshop on Recent Developments in Applied Probability and Statistics , 2009-04-23

Title : ( nonparametric Estimation of Partial Derivatives of a Multivariate Probability )

Authors: Nargess Hosseinioun , Hassan Doosti , Hossein Ali Niroumand ,

Citation: BibTeX | EndNote

Abstract

The mathematical theory of wavelet and their applications in statistics have become a well-known technique for non-parametric curve estimation. We Consider the problem of estimation of the partial derivatives of a multivariate probability density f of mixing sequences, using wavelet based method. Many stochastic processes and time series are known to be mixing. Under certain weak assumptions autoregressive and more generally bilinear time series models are strongly mixing with exponential mixing coefficients. The problem of density estimation from dependent samples is often considered. For instance quadratic losses were considered by several authors . We investigate the variance and the rate of the almost convergence of wavelet-based estimators. Rate of convergence of estimators when f belongs to the Besov space is also established.

Keywords

wavelets; density estimation; Besov space
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@inproceedings{paperid:1011850,
author = {Hosseinioun, Nargess and Doosti, Hassan and Niroumand, Hossein Ali},
title = {nonparametric Estimation of Partial Derivatives of a Multivariate Probability},
booktitle = {Workshop on Recent Developments in Applied Probability and Statistics},
year = {2009},
keywords = {wavelets; density estimation; Besov space},
}

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%0 Conference Proceedings
%T nonparametric Estimation of Partial Derivatives of a Multivariate Probability
%A Hosseinioun, Nargess
%A Doosti, Hassan
%A Niroumand, Hossein Ali
%J Workshop on Recent Developments in Applied Probability and Statistics
%D 2009

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