On Block Thresholding in Wavelet Regression: Adaptivity, Block Size, and Threshold Level
نویسنده
چکیده
In this article we investigate the asymptotic and numerical properties of a class of block thresholding estimators for wavelet regression. We consider the effect of block size on global and local adaptivity and the ch oice of thresholding constant. The optimal rate of convergence for block thresholding with a given block size is derived for both the global and local estimation. It is shown that there are conflicting requirements on the block size for achieving the global and local adaptivity. We then consider the choice of thresholding constant for a given block size by treating the block thresholding as a hypothesis testing problem. The combined results lead naturally to an optimal choice of block size and thresholding constant. We conclude with a numerical study which compares the finite-sample performance among block thresholding estimators as well as with other wavelet methods.
منابع مشابه
Wavelet Regression via Block Thresholding : Adaptivity and the Choice of Block Sizeand Threshold
We consider block thresholding rules for wavelet regression and derive an \opti-mal" block thresholding estimator that is fully speciied and easy to implement, at a computational cost of O(n). We begin by studying the eeect of block length on both the global and local adaptiv-ity. The results show that there are connicting requirements on block size for achieving the global and local adaptivity...
متن کاملA Data-Driven Block Thresholding Approach to Wavelet Estimation
A data-driven block thresholding procedure for wavelet regression is proposed and its theoretical and numerical properties are investigated. The procedure empirically chooses the block size and threshold level at each resolution level by minimizing Stein’s unbiased risk estimate. The estimator is sharp adaptive over a class of Besov bodies and achieves simultaneously within a small constant fac...
متن کاملThe Root-Unroot Algorithm for Density Estimation as Implemented via Wavelet Block Thresholding
We propose and implement a density estimation procedure which begins by turning density estimation into a nonparametric regression problem. This regression problem is created by binning the original observations into many small size bins, and by then applying a suitable form of root transformation to the binned data counts. In principle many common nonparametric regression estimators could then...
متن کاملWavelet Block Thresholding for Non-Gaussian Errors
Wavelet thresholding generally assumes independent, identically distributed normal errors when estimating functions in a nonparametric regression setting. VisuShrink and SureShrink are just two of the many common thresholding methods based on this assumption. When the errors are not normally distributed, however, few methods have been proposed. In this paper, a distribution-free method for thre...
متن کاملMinimax Wavelet Estimation Via Block Thresholding
Wavelet shrinkage methods have been very successful in nonparametric regression. The most commonly used wavelet procedures achieve adaptivity through term-by-term thresholding. The resulting estimators attain the minimax rates of convergence up to a logarithmic factor. In the present paper, we propose a block thresholding method where wavelet coef-cients are thresholded in blocks, rather than i...
متن کاملذخیره در منابع من
با ذخیره ی این منبع در منابع من، دسترسی به آن را برای استفاده های بعدی آسان تر کنید
عنوان ژورنال:
دوره شماره
صفحات -
تاریخ انتشار 2002