In this paper we deal with the regression problem in a random design setting. We investigate asymptotic optimality under minimax point of view of various Bayesian rules based on warped wavelets and show that they nearly attain optimal minimax rates of convergence over the Besov smoothness class considered. Warped wavelets have been introduced recently, they offer very good computable and easy-to-implement properties while being well adapted to the statistical problem at hand. We particularly put emphasis on Bayesian rules leaning on small and large variance Gaussian priors and discuss their simulation performances comparing them with a hard thresholding procedure
We present a new approach of nonparametric regression with wavelets if the design is stochastic. In ...
The current research on wavelet regression has been mostly focused on equispaced samples. In general...
We present some contributions to the nonparametric functional estimation via wavelet methods.Our stu...
The purpose of this paper is to investigate the numerical performances of the hard thresholding proc...
The purpose of this paper is to investigate the numerical performances of the hard thresh-olding pro...
The problem of estimating a regression function based on a regression model with (known) random desi...
The problem of estimating a regression function based on a regression model with (known) random desi...
We investigate function estimation in nonparametric regression models with random design and heteros...
One treats the Hausdorff moment problem, the deconvolution on the sphere one and the problem of regr...
17 pagesIn the framework of regression model with (known) random design, we prove that estimators of...
AbstractThe wavelet threshold estimator of a regression function for the random design is constructe...
We show that for nonparametric regression if the samples have random uniform design, the wavelet met...
We show that for nonparametric regression if the samples have random uniform design, the wavelet met...
We show that for nonparametric regression if the samples have random uniform design, the wavelet met...
The present paper investigates theoretical performance of various Bayesian wavelet shrinkage rules i...
We present a new approach of nonparametric regression with wavelets if the design is stochastic. In ...
The current research on wavelet regression has been mostly focused on equispaced samples. In general...
We present some contributions to the nonparametric functional estimation via wavelet methods.Our stu...
The purpose of this paper is to investigate the numerical performances of the hard thresholding proc...
The purpose of this paper is to investigate the numerical performances of the hard thresh-olding pro...
The problem of estimating a regression function based on a regression model with (known) random desi...
The problem of estimating a regression function based on a regression model with (known) random desi...
We investigate function estimation in nonparametric regression models with random design and heteros...
One treats the Hausdorff moment problem, the deconvolution on the sphere one and the problem of regr...
17 pagesIn the framework of regression model with (known) random design, we prove that estimators of...
AbstractThe wavelet threshold estimator of a regression function for the random design is constructe...
We show that for nonparametric regression if the samples have random uniform design, the wavelet met...
We show that for nonparametric regression if the samples have random uniform design, the wavelet met...
We show that for nonparametric regression if the samples have random uniform design, the wavelet met...
The present paper investigates theoretical performance of various Bayesian wavelet shrinkage rules i...
We present a new approach of nonparametric regression with wavelets if the design is stochastic. In ...
The current research on wavelet regression has been mostly focused on equispaced samples. In general...
We present some contributions to the nonparametric functional estimation via wavelet methods.Our stu...