This paper considers the problem of nonparametric deconvolution density estimation when sample observa-tions are contaminated by double exponentially distributed errors. Three different deconvolution density estima-tors are introduced: a weighted kernel density estimator, a kernel density estimator based on the support vector regression method in a RKHS, and a classical kernel density estimator. The performance of these deconvolution density estimators is compared by means of a simulation study
summary:We study the density deconvolution problem when the random variables of interest are an asso...
This paper studies the problem of estimating the density of U when only independent copies of X = U ...
The basic task in deconvolution density estimation is the estimation of a probability density f base...
Abstract. In this tutorial paper we give an overview of deconvolution problems in nonparametric stat...
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...
This book gives an introduction to deconvolution problems in nonparametric statistics, e.g. density ...
A new semiparametric method for density deconvolution is proposed, based on a model in which only th...
International audienceA density deconvolution problem with unknown distribution of the errors is con...
Abstract We present a semi-parametric deconvolution estimator for the density func-tion of a random ...
The convolution has a big signification in mathematical statistics. In the opening chapter, we defin...
It is quite common in the statistical literature on nonparametric deconvolution to assume that the e...
We construct a density estimator and an estimator of the distribution function in the uniform deconv...
We consider deconvolution problems where the observations are equal in distribution to X = [lambda]1...
Let X1,…,Xn be i.i.d. observations, where Xi=Yi+snZi and the Y’s and Z’s are independent. Assume tha...
summary:We study the density deconvolution problem when the random variables of interest are an asso...
This paper studies the problem of estimating the density of U when only independent copies of X = U ...
The basic task in deconvolution density estimation is the estimation of a probability density f base...
Abstract. In this tutorial paper we give an overview of deconvolution problems in nonparametric stat...
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...
This book gives an introduction to deconvolution problems in nonparametric statistics, e.g. density ...
A new semiparametric method for density deconvolution is proposed, based on a model in which only th...
International audienceA density deconvolution problem with unknown distribution of the errors is con...
Abstract We present a semi-parametric deconvolution estimator for the density func-tion of a random ...
The convolution has a big signification in mathematical statistics. In the opening chapter, we defin...
It is quite common in the statistical literature on nonparametric deconvolution to assume that the e...
We construct a density estimator and an estimator of the distribution function in the uniform deconv...
We consider deconvolution problems where the observations are equal in distribution to X = [lambda]1...
Let X1,…,Xn be i.i.d. observations, where Xi=Yi+snZi and the Y’s and Z’s are independent. Assume tha...
summary:We study the density deconvolution problem when the random variables of interest are an asso...
This paper studies the problem of estimating the density of U when only independent copies of X = U ...
The basic task in deconvolution density estimation is the estimation of a probability density f base...