Wavelet analysis has been found to be a powerful tool for the nonparametric estimation of spatially-variable objects. We discuss in detail wavelet methods in nonparametric regression, where the data are modelled as observations of a signal contaminated with additive Gaussian noise, and provide an extensive review of the vast literature of wavelet shrinkage and wavelet thresholding estimators developed to denoise such data. These estimators arise from a wide range of classical and empirical Bayes methods treating either individual or blocks of wavelet coefficients. We compare various estimators in an extensive simulation study on a variety of sample sizes, test functions, signal-to-noise ratios and wavelet filters. Because there is no single...
Standard wavelet shrinkage procedures for nonparametric regression are restricted to equispaced samp...
ABSTRACT Bayesian methods based on hierarchical mixture models have demonstrated excellent mean squa...
We consider the problem of estimating the unknown response function and its deriva-tives in the stan...
International audienceWavelet analysis has been found to be a powerful tool for the nonparametric es...
Wavelet analysis has been found to be a powerful tool for the nonparametric estimation of spatially-...
Abstract: In this paper we will present wavelet thresholding estimators in nonparametric regression ...
International audienceThe development of wavelet theory has in recent years spawned applications in ...
In this article, a nonparametric regression problem is discussed on wavelet bases via a Bayesian str...
Vita.Two research areas that have generated a great deal of interest in the field of statistics are ...
Wavelet shrinkage methods are widely recognized as a useful tool for non-parametric regression and s...
There has been great interest in recent years in the development of wavelet methods for estimating a...
Wavelet shrinkage methods are widely recognized as a useful tool for non-parametric regression and s...
Abstract: The main purpose of this article is to study the wavelet shrinkage method from a Bayesian ...
Standard wavelet shrinkage procedures for nonparametric regression are restricted to equispaced samp...
Wavelets have gained considerable popularity within the statistical arena in the context of nonparam...
Standard wavelet shrinkage procedures for nonparametric regression are restricted to equispaced samp...
ABSTRACT Bayesian methods based on hierarchical mixture models have demonstrated excellent mean squa...
We consider the problem of estimating the unknown response function and its deriva-tives in the stan...
International audienceWavelet analysis has been found to be a powerful tool for the nonparametric es...
Wavelet analysis has been found to be a powerful tool for the nonparametric estimation of spatially-...
Abstract: In this paper we will present wavelet thresholding estimators in nonparametric regression ...
International audienceThe development of wavelet theory has in recent years spawned applications in ...
In this article, a nonparametric regression problem is discussed on wavelet bases via a Bayesian str...
Vita.Two research areas that have generated a great deal of interest in the field of statistics are ...
Wavelet shrinkage methods are widely recognized as a useful tool for non-parametric regression and s...
There has been great interest in recent years in the development of wavelet methods for estimating a...
Wavelet shrinkage methods are widely recognized as a useful tool for non-parametric regression and s...
Abstract: The main purpose of this article is to study the wavelet shrinkage method from a Bayesian ...
Standard wavelet shrinkage procedures for nonparametric regression are restricted to equispaced samp...
Wavelets have gained considerable popularity within the statistical arena in the context of nonparam...
Standard wavelet shrinkage procedures for nonparametric regression are restricted to equispaced samp...
ABSTRACT Bayesian methods based on hierarchical mixture models have demonstrated excellent mean squa...
We consider the problem of estimating the unknown response function and its deriva-tives in the stan...