In this paper we focus on nonparametric estimation of a constrained regression function using penalized wavelet regression techniques. This results into a convex op- timization problem under linear constraints. Necessary and sufficient conditions for existence of a unique solution are discussed. The estimator is easily obtained via the dual formulation of the optimization problem. In particular we investigate a penalized wavelet monotone regression estimator. We establish the rate of convergence of this estimator, and illustrate its finite sample performance via a simulation study. We also compare its performance with that of a recently proposed constrained estimator. An illustration to some real data is given
We study the performances of an adaptive procedure based on a convex combination, with data-driven w...
For density estimation and nonparametric regression, block thresholding is very adaptive and efficie...
This paper considers an unknown functional estimation problem in a regression model with multiplicat...
In this paper we focus on nonparametric estimation of a constrained regression function using penali...
International audienceIn this paper we focus on nonparametric estimation of a constrained regression...
International audienceIn this paper we focus on nonparametric estimation of a constrained regression...
Professors Antoniadis and Fan are to be congratulated for their valuable work on the penalized least...
We show that a nonparametric estimator of a regression function, obtained as solution of a specific ...
Semiparametric regression models have a linear part as in the linear regression and a nonlinear part...
Semiparametric regression models have a linear part as in the linear regression and a nonlinear part...
AbstractWe show that a nonparametric estimator of a regression function, obtained as solution of a s...
Abstract: We introduce the concept of penalized wavelets to facilitate seamless embedding of wavelet...
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...
The model we will study in this paper is a non-parametric regression model on the unit interval [0; ...
We study the performances of an adaptive procedure based on a convex combination, with data-driven w...
For density estimation and nonparametric regression, block thresholding is very adaptive and efficie...
This paper considers an unknown functional estimation problem in a regression model with multiplicat...
In this paper we focus on nonparametric estimation of a constrained regression function using penali...
International audienceIn this paper we focus on nonparametric estimation of a constrained regression...
International audienceIn this paper we focus on nonparametric estimation of a constrained regression...
Professors Antoniadis and Fan are to be congratulated for their valuable work on the penalized least...
We show that a nonparametric estimator of a regression function, obtained as solution of a specific ...
Semiparametric regression models have a linear part as in the linear regression and a nonlinear part...
Semiparametric regression models have a linear part as in the linear regression and a nonlinear part...
AbstractWe show that a nonparametric estimator of a regression function, obtained as solution of a s...
Abstract: We introduce the concept of penalized wavelets to facilitate seamless embedding of wavelet...
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...
The model we will study in this paper is a non-parametric regression model on the unit interval [0; ...
We study the performances of an adaptive procedure based on a convex combination, with data-driven w...
For density estimation and nonparametric regression, block thresholding is very adaptive and efficie...
This paper considers an unknown functional estimation problem in a regression model with multiplicat...