The problem of estimating a regression function based on a regression model with (known) random design is considered. By adopting the framework of wavelet analysis, we establish the asymptotic minimax rate of convergence under the risk over Besov balls. A part of this paper is devoted to the case where the design density is vanishing.Regression with random design Minimax rate of convergence Besov spaces
We investigate the estimation of the derivatives of a regression function in the nonparametric regre...
We consider the problem of estimating an unknown regression function when the design is random with...
We consider the problem of estimating an unknown regression function when the design is random with...
The problem of estimating a regression function based on a regression model with (known) random desi...
AbstractThe wavelet threshold estimator of a regression function for the random design is constructe...
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...
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...
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...
The nonlinear wavelet estimator of regression function with random design is constructed. The optima...
20 pA nonparametric regression model with uniform random design and heteroscedastic errors (with a d...
20 pA nonparametric regression model with uniform random design and heteroscedastic errors (with a d...
We investigate the estimation of the derivatives of a regression function in the nonparametric regre...
We investigate the estimation of the derivatives of a regression function in the nonparametric regre...
We consider the problem of estimating an unknown regression function when the design is random with...
We consider the problem of estimating an unknown regression function when the design is random with...
The problem of estimating a regression function based on a regression model with (known) random desi...
AbstractThe wavelet threshold estimator of a regression function for the random design is constructe...
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...
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...
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...
The nonlinear wavelet estimator of regression function with random design is constructed. The optima...
20 pA nonparametric regression model with uniform random design and heteroscedastic errors (with a d...
20 pA nonparametric regression model with uniform random design and heteroscedastic errors (with a d...
We investigate the estimation of the derivatives of a regression function in the nonparametric regre...
We investigate the estimation of the derivatives of a regression function in the nonparametric regre...
We consider the problem of estimating an unknown regression function when the design is random with...
We consider the problem of estimating an unknown regression function when the design is random with...