Title of article
On the Minimax Optimality of Block Thresholded Wavelets Estimators for ρ-Mixing Process
Author/Authors
Doosti، H. Department of Statistics - School of Mathematical Sciences - Ferdowsi University, Mashhad, Iran , Niroumand، H.A. No Affiliation
Issue Information
فصلنامه با شماره پیاپی 0 سال 2006
Pages
7
From page
153
To page
159
Abstract
We propose a wavelet based regression function estimator for the estimation of the regression function for a sequence of ?-missing random variables with a common one-dimensional probability density function. Some asymptotic properties of the proposed estimator based on block thresholding are investigated. It is found that the estimators achieve optimal minimax convergence rates over large classes of functions that involve many irregularities of a wide variety of types, including chirp and Doppler functions and jump discontinuities.
Abstract
We propose a wavelet based regression function estimator for the estimation of the regression function for a sequence of ?-missing random variables with a common one-dimensional probability density function. Some asymptotic properties of the proposed estimator based on block thresholding are investigated. It is found that the estimators achieve optimal minimax convergence rates over large classes of functions that involve many irregularities of a wide variety of types, including chirp and Doppler functions and jump discontinuities.
Keywords
Minimax estimation splines recieved , Rates of convergence , Block thresholded , Non-linear wavelet-based estimator
Journal title
Journal of Sciences
Serial Year
2006
Journal title
Journal of Sciences
Record number
2386263
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