International audienceA density deconvolution problem with unknown distribution of the errors is considered. To make the target density identifiable, one has to assume that some additional information on the noise is available. We consider two different models: the framework where some additional sample of the pure noise is available, as well as the repeated observation model, where the contaminated random variable of interest can be observed repeatedly. We introduce kernel estimators and present upper risk bounds. The focus of this work lies on the optimal data driven choice of the smoothing parameter using a penalization strategy
We consider a circular deconvolution problem, where the density f of a cir-cular random variable X h...
Quantile estimation in deconvolution problems is studied comprehensively. In particular, the more re...
We consider a circular deconvolution problem, where the density f of a circular random variable X ha...
International audienceA density deconvolution problem with unknown distribution of the errors is con...
Abstract. We consider the problem of estimating the density g of identically distributed vari-ables ...
Abstract. We consider the problem of estimating the density g of independent and identically distrib...
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...
Abstract. We consider the problem of density deconvolution in the context of circular random variabl...
Abstract. In this tutorial paper we give an overview of deconvolution problems in nonparametric stat...
We estimate the distribution of a real-valued random variable from contaminated observations. The ad...
AbstractWe consider the problem of estimating a continuous bounded probability density function when...
This book gives an introduction to deconvolution problems in nonparametric statistics, e.g. density ...
We consider estimation of the common probability density f of i.i.d. random variables Xi that are ob...
We consider a circular deconvolution problem, where the density f of a cir-cular random variable X h...
Quantile estimation in deconvolution problems is studied comprehensively. In particular, the more re...
We consider a circular deconvolution problem, where the density f of a circular random variable X ha...
International audienceA density deconvolution problem with unknown distribution of the errors is con...
Abstract. We consider the problem of estimating the density g of identically distributed vari-ables ...
Abstract. We consider the problem of estimating the density g of independent and identically distrib...
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...
Abstract. We consider the problem of density deconvolution in the context of circular random variabl...
Abstract. In this tutorial paper we give an overview of deconvolution problems in nonparametric stat...
We estimate the distribution of a real-valued random variable from contaminated observations. The ad...
AbstractWe consider the problem of estimating a continuous bounded probability density function when...
This book gives an introduction to deconvolution problems in nonparametric statistics, e.g. density ...
We consider estimation of the common probability density f of i.i.d. random variables Xi that are ob...
We consider a circular deconvolution problem, where the density f of a cir-cular random variable X h...
Quantile estimation in deconvolution problems is studied comprehensively. In particular, the more re...
We consider a circular deconvolution problem, where the density f of a circular random variable X ha...