AbstractIn the paper minimax rates of convergence for wavelet estimators are studied. The estimators are based on the shrinkage of empirical coefficients βjkof wavelet decomposition of unknown function with thresholds λj. These thresholds depend on the regularity of the function to be estimated. In the problem of density estimation and nonparametric regression we establish upper rates of convergence over a large range of functional classes and global error measures. The constructed estimate is minimax (up to constant) for all Lπerror measures, 0 < π ≤ ∞ simultaneously
19pWe consider a nonparametric regression model where $m$ noise-perturbed functions $f_1,\ldots,f_m$...
In the present paper, we derive lower bounds for the risk of the nonparametric empirical Bayes estim...
Assume that (Xt)t∈Z is a real valued time series admitting a common marginal density f with respect ...
AbstractIn the paper minimax rates of convergence for wavelet estimators are studied. The estimators...
Density estimation is a commonly used test case for non-parametric estimation methods. We explore th...
We consider the estimation of nonparametric regression function with long memory data and investigat...
For density estimation and nonparametric regression, block thresholding is very adaptive and efficie...
Assume that (Xt)t∈Z is a real valued time series admitting a common marginal density f with respect ...
AbstractWavelet shrinkage estimators are obtained by applying a shrinkage rule on the empirical wave...
The wavelet threshold estimator of a regression function for the random design is constructed. The o...
The wavelet threshold estimator of a regression function for the random design is constructed. The o...
AbstractThe wavelet threshold estimator of a regression function for the random design is constructe...
International audienceIn this paper we provide a theoretical contribution to the point-wise mean squ...
Abstract: We consider function estimation in nonparametric regression over Besov spaces and under po...
Abstract: In this article we investigate the asymptotic and numerical properties of a class of block...
19pWe consider a nonparametric regression model where $m$ noise-perturbed functions $f_1,\ldots,f_m$...
In the present paper, we derive lower bounds for the risk of the nonparametric empirical Bayes estim...
Assume that (Xt)t∈Z is a real valued time series admitting a common marginal density f with respect ...
AbstractIn the paper minimax rates of convergence for wavelet estimators are studied. The estimators...
Density estimation is a commonly used test case for non-parametric estimation methods. We explore th...
We consider the estimation of nonparametric regression function with long memory data and investigat...
For density estimation and nonparametric regression, block thresholding is very adaptive and efficie...
Assume that (Xt)t∈Z is a real valued time series admitting a common marginal density f with respect ...
AbstractWavelet shrinkage estimators are obtained by applying a shrinkage rule on the empirical wave...
The wavelet threshold estimator of a regression function for the random design is constructed. The o...
The wavelet threshold estimator of a regression function for the random design is constructed. The o...
AbstractThe wavelet threshold estimator of a regression function for the random design is constructe...
International audienceIn this paper we provide a theoretical contribution to the point-wise mean squ...
Abstract: We consider function estimation in nonparametric regression over Besov spaces and under po...
Abstract: In this article we investigate the asymptotic and numerical properties of a class of block...
19pWe consider a nonparametric regression model where $m$ noise-perturbed functions $f_1,\ldots,f_m$...
In the present paper, we derive lower bounds for the risk of the nonparametric empirical Bayes estim...
Assume that (Xt)t∈Z is a real valued time series admitting a common marginal density f with respect ...