This book gives an introduction to deconvolution problems in nonparametric statistics, e.g. density estimation based on contaminated data, errors-in-variables regression, and image reconstruction. Some real-life applications are discussed while we mainly focus on methodology (description of the estimation procedures) and theory (minimax convergence rates with rigorous proofs and adaptive smoothing parameter selection). In general, we have tried to present the proofs in such manner that only a low level of previous knowledge is needed. An appendix chapter on further results of Fourier analysi
This paper considers the problem of nonparametric deconvolution density estimation when sample obser...
We introduce a new procedure to select the optimal cutoff parameter for Fourier density estimators t...
A new semiparametric method for density deconvolution is proposed, based on a model in which only th...
Abstract. In this tutorial paper we give an overview of deconvolution problems in nonparametric stat...
It is quite common in the statistical literature on nonparametric deconvolution to assume that the e...
We consider estimating an unknown function f from indirect white noise observations with particular ...
The deconvolution kernel density estimator is a popular technique for solving the deconvolution prob...
We consider the problem of estimating a probability density function based on data that are corrupte...
summary:We study the density deconvolution problem when the random variables of interest are an asso...
In this note we derive a weighted non-linear least squares procedure for choosing the smoothing para...
The convolution has a big signification in mathematical statistics. In the opening chapter, we defin...
This thesis is concerned with the development of estimation techniques in four models involving stat...
International audienceA density deconvolution problem with unknown distribution of the errors is con...
A new nonparametric estimation procedure is introduced for the distribution function in a class of d...
We consider estimating an unknown function f from indirect white noise observations with particular ...
This paper considers the problem of nonparametric deconvolution density estimation when sample obser...
We introduce a new procedure to select the optimal cutoff parameter for Fourier density estimators t...
A new semiparametric method for density deconvolution is proposed, based on a model in which only th...
Abstract. In this tutorial paper we give an overview of deconvolution problems in nonparametric stat...
It is quite common in the statistical literature on nonparametric deconvolution to assume that the e...
We consider estimating an unknown function f from indirect white noise observations with particular ...
The deconvolution kernel density estimator is a popular technique for solving the deconvolution prob...
We consider the problem of estimating a probability density function based on data that are corrupte...
summary:We study the density deconvolution problem when the random variables of interest are an asso...
In this note we derive a weighted non-linear least squares procedure for choosing the smoothing para...
The convolution has a big signification in mathematical statistics. In the opening chapter, we defin...
This thesis is concerned with the development of estimation techniques in four models involving stat...
International audienceA density deconvolution problem with unknown distribution of the errors is con...
A new nonparametric estimation procedure is introduced for the distribution function in a class of d...
We consider estimating an unknown function f from indirect white noise observations with particular ...
This paper considers the problem of nonparametric deconvolution density estimation when sample obser...
We introduce a new procedure to select the optimal cutoff parameter for Fourier density estimators t...
A new semiparametric method for density deconvolution is proposed, based on a model in which only th...