International audienceWe address the statistical issue of determining the maximal spaces (maxisets) where model selection procedures attain a given rate of convergence. By considering first general dictionaries, then orthonormal bases, we characterize these maxisets in terms of approximation spaces. These results are illustrated by classical choices of wavelet model collections. For each of them, the maxisets are described in terms of functional spaces. We take a special care of the issue of calculability and measure the induced loss of performance in terms of maxisets
International audienceWe focus on the performances of tree-structured wavelet estimators belonging t...
In recent years, various nonlinear methods have been proposed and deeply investigated in the context...
The problem of selecting a model in infinite or high dimensional setup has been of great interest in...
International audienceWe address the statistical issue of determining the maximal spaces (maxisets) ...
International audienceWe address the statistical issue of determining the maximal spaces (maxisets) ...
International audienceWe address the statistical issue of determining the maximal spaces (maxisets) ...
In the framework of a wavelet analysis, we study the statistical meaning of many classes of procedur...
We study the performance of a large collection of block thresholding wavelet estimators, namely the ...
We study maxisets for linear procedures in the framework of the heteroscedastic white noise model. T...
International audienceWe study the maxiset performance of a large collection of block thresholding w...
International audienceIn this paper we compute the maxisets of some denoising methods (estimators) f...
International audienceIn this paper we compute the maxisets of some denoising methods (estimators) f...
International audienceWe study the maxiset performance of a large collection of block thresholding w...
International audienceIn this paper we compute the maxisets of some denoising methods (estimators) f...
Abstract: This paper deals with the density and regression estima-tion problems for functional data....
International audienceWe focus on the performances of tree-structured wavelet estimators belonging t...
In recent years, various nonlinear methods have been proposed and deeply investigated in the context...
The problem of selecting a model in infinite or high dimensional setup has been of great interest in...
International audienceWe address the statistical issue of determining the maximal spaces (maxisets) ...
International audienceWe address the statistical issue of determining the maximal spaces (maxisets) ...
International audienceWe address the statistical issue of determining the maximal spaces (maxisets) ...
In the framework of a wavelet analysis, we study the statistical meaning of many classes of procedur...
We study the performance of a large collection of block thresholding wavelet estimators, namely the ...
We study maxisets for linear procedures in the framework of the heteroscedastic white noise model. T...
International audienceWe study the maxiset performance of a large collection of block thresholding w...
International audienceIn this paper we compute the maxisets of some denoising methods (estimators) f...
International audienceIn this paper we compute the maxisets of some denoising methods (estimators) f...
International audienceWe study the maxiset performance of a large collection of block thresholding w...
International audienceIn this paper we compute the maxisets of some denoising methods (estimators) f...
Abstract: This paper deals with the density and regression estima-tion problems for functional data....
International audienceWe focus on the performances of tree-structured wavelet estimators belonging t...
In recent years, various nonlinear methods have been proposed and deeply investigated in the context...
The problem of selecting a model in infinite or high dimensional setup has been of great interest in...