International audienceA two-class mixture model, where the density of one of the components is known, is considered. We address the issue of the nonparametric adaptive estimation of the unknown probability density of the second component. We propose a randomly weighted kernel estimator with a fully data-driven bandwidth selection method, in the spirit of the Goldenshluger and Lepski method. An oracle-type inequality for the pointwise quadratic risk is derived as well as convergence rates over Hölder smoothness classes. The theoretical results are illustrated by numerical simulations
We study location-scale mixture priors for nonparametric statistical problems, including multivariat...
In a multiple testing context, we consider a semiparametric mixture model with two components where ...
In a multiple testing context, we consider a semiparametric mixture model with two components where ...
International audienceStatistical estimation aims at building procedures to recover unknown paramete...
International audienceStatistical estimation aims at building procedures to recover unknown paramete...
Finite mixture models have been successfully used in many applications, such as classification, clus...
International audienceSeveral adaptive methods to estimate a density from biased data are pre-sented...
Abstract. We propose a new type of non parametric density estimators fitted to nonnegative random va...
In this work we investigate the asymptotic properties of nonparametric bayesian mixtures of Betas fo...
International audienceIn this article, we propose a new adaptive estimator for compact supported den...
International audienceIn this article, we propose a new adaptive estimator for compact supported den...
We study location-scale mixture priors for nonparametric statistical problems, including multivariat...
A semiparametric two-component mixture model is considered, in which the distribution of one (primar...
Moment matching is a popular means of parametric density estimation. We extend this technique to non...
Moment matching is a popular means of parametric density estimation. We extend this technique to non...
We study location-scale mixture priors for nonparametric statistical problems, including multivariat...
In a multiple testing context, we consider a semiparametric mixture model with two components where ...
In a multiple testing context, we consider a semiparametric mixture model with two components where ...
International audienceStatistical estimation aims at building procedures to recover unknown paramete...
International audienceStatistical estimation aims at building procedures to recover unknown paramete...
Finite mixture models have been successfully used in many applications, such as classification, clus...
International audienceSeveral adaptive methods to estimate a density from biased data are pre-sented...
Abstract. We propose a new type of non parametric density estimators fitted to nonnegative random va...
In this work we investigate the asymptotic properties of nonparametric bayesian mixtures of Betas fo...
International audienceIn this article, we propose a new adaptive estimator for compact supported den...
International audienceIn this article, we propose a new adaptive estimator for compact supported den...
We study location-scale mixture priors for nonparametric statistical problems, including multivariat...
A semiparametric two-component mixture model is considered, in which the distribution of one (primar...
Moment matching is a popular means of parametric density estimation. We extend this technique to non...
Moment matching is a popular means of parametric density estimation. We extend this technique to non...
We study location-scale mixture priors for nonparametric statistical problems, including multivariat...
In a multiple testing context, we consider a semiparametric mixture model with two components where ...
In a multiple testing context, we consider a semiparametric mixture model with two components where ...