International audienceIn this paper, we deal with the estimation of an unknown function from a nonparametric regression model with both additive and multiplicative noises. The case of the uniform multiplicative noise is considered. We develop a projection es-timator based on wavelets for this problem. We prove that it attains a fast rate of convergence under the mean integrated square error over Besov spaces. A practical extension to automatically select the truncation parameter of this estimator is discussed. A numerical study illustrates the usefulness of this extension
We attempt to recover a regression function from noisy data. It is assumed that the underlying funct...
For density estimation and nonparametric regression, block thresholding is very adaptive and efficie...
In this paper we focus on nonparametric estimation of a constrained regression function using penali...
International audienceIn this paper, we deal with the estimation of an unknown function from a nonpa...
International audienceWe consider the estimation of an unknown regression function from a nonparamet...
International audienceWe consider the estimation of an unknown regression function from a nonparamet...
International audienceIn this paper, we consider an unknown functional estimation problem in a gener...
This paper considers an unknown functional estimation problem in a regression model with multiplicat...
In this paper, we consider an unknown functional estimation problem in a general nonparametric regre...
We show that a nonparametric estimator of a regression function, obtained as solution of a specific ...
19pWe consider a nonparametric regression model where $m$ noise-perturbed functions $f_1,\ldots,f_m$...
19pWe consider a nonparametric regression model where $m$ noise-perturbed functions $f_1,\ldots,f_m$...
International audienceWe consider a nonparametric regression model where m noiseperturbed functions ...
International audienceWe consider a nonparametric regression model where m noiseperturbed functions ...
This paper is concerned with a semiparametric regression model Yi=θ1+2(Ti)+εi, i=1,…n where the erro...
We attempt to recover a regression function from noisy data. It is assumed that the underlying funct...
For density estimation and nonparametric regression, block thresholding is very adaptive and efficie...
In this paper we focus on nonparametric estimation of a constrained regression function using penali...
International audienceIn this paper, we deal with the estimation of an unknown function from a nonpa...
International audienceWe consider the estimation of an unknown regression function from a nonparamet...
International audienceWe consider the estimation of an unknown regression function from a nonparamet...
International audienceIn this paper, we consider an unknown functional estimation problem in a gener...
This paper considers an unknown functional estimation problem in a regression model with multiplicat...
In this paper, we consider an unknown functional estimation problem in a general nonparametric regre...
We show that a nonparametric estimator of a regression function, obtained as solution of a specific ...
19pWe consider a nonparametric regression model where $m$ noise-perturbed functions $f_1,\ldots,f_m$...
19pWe consider a nonparametric regression model where $m$ noise-perturbed functions $f_1,\ldots,f_m$...
International audienceWe consider a nonparametric regression model where m noiseperturbed functions ...
International audienceWe consider a nonparametric regression model where m noiseperturbed functions ...
This paper is concerned with a semiparametric regression model Yi=θ1+2(Ti)+εi, i=1,…n where the erro...
We attempt to recover a regression function from noisy data. It is assumed that the underlying funct...
For density estimation and nonparametric regression, block thresholding is very adaptive and efficie...
In this paper we focus on nonparametric estimation of a constrained regression function using penali...