We study wavelet function estimation via the approach of block
thresholding and ideal adaptation with oracle. Oracle inequalities are derived
and serve as guides for the selection of smoothing parameters. Based on an
oracle inequality and motivated by the data compression and localization
properties of wavelets, an adaptive wavelet estimator for nonparametric
regression is proposed and the optimality of the procedure is investigated. We
show that the estimator achieves simultaneously three objectives: adaptivity,
spatial adaptivity and computational efficiency. Specifically, it is proved
that the estimator attains the exact optimal rates of convergence over a range
of Besov classes and the estimator achieves adaptive local minimax rate for
estimating functions at a point. The estimator is easy to implement, at the
computational cost of $O(n)$. Simulation shows that the estimator has excellent
numerical performance relative to more traditional wavelet estimators.
@article{1018031262,
author = {Cai, T. Tony},
title = {Adaptive wavelet estimation: a block thresholding and oracle
inequality approach},
journal = {Ann. Statist.},
volume = {27},
number = {4},
year = {1999},
pages = { 898-924},
language = {en},
url = {http://dml.mathdoc.fr/item/1018031262}
}
Cai, T. Tony. Adaptive wavelet estimation: a block thresholding and oracle
inequality approach. Ann. Statist., Tome 27 (1999) no. 4, pp. 898-924. http://gdmltest.u-ga.fr/item/1018031262/