We investigate function estimation in nonparametric regression models with random design and heteroscedastic correlated noise. Adaptive properties of warped wavelet nonlinear approximations are studied over a wide range of Besov scales, f ∈ Bsπ,r, and for a variety of Lp error measures. We consider error distributions with Long-Range-Dependence parameter α,0 < α ≤ 1; heteroscedasticity is modeled with a design dependent function σ. We pre-scribe a tuning paradigm, under which warped wavelet estimation achieves partial or full adaptivity results with the rates that are shown to be the mini-max rates of convergence. For p> 2, it is seen that there are three rate phases, namely the dense, sparse and long range dependence phase, depending...
Abstract: We give a unified, non-iterative formulation for wavelet estimators that can be applied in...
We investigate the estimation of the derivatives of a regression function in the nonparametric regre...
The current research on wavelet regression has been mostly focused on equispaced samples. In general...
We investigate function estimation in a nonparametric regression model having the following particul...
We investigate function estimation in a nonparametric regression model having the following particul...
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...
The purpose of this paper is to investigate the numerical performances of the hard thresh-olding pro...
The nonlinear wavelet estimator of regression function with random design is constructed. The optima...
We investigate the nonparametric bivariate additive regression estimation in the random design and l...
We present a new approach of nonparametric regression with wavelets if the design is stochastic. In ...
The purpose of this paper is to investigate the numerical performances of the hard thresholding proc...
Abstract: We investigate global performances of non-linear wavelet estimation in regression models w...
We show that for nonparametric regression if the samples have random uniform design, the wavelet met...
We investigate the estimation of the derivatives of a regression function in the nonparametric regre...
Abstract: We give a unified, non-iterative formulation for wavelet estimators that can be applied in...
We investigate the estimation of the derivatives of a regression function in the nonparametric regre...
The current research on wavelet regression has been mostly focused on equispaced samples. In general...
We investigate function estimation in a nonparametric regression model having the following particul...
We investigate function estimation in a nonparametric regression model having the following particul...
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...
The purpose of this paper is to investigate the numerical performances of the hard thresh-olding pro...
The nonlinear wavelet estimator of regression function with random design is constructed. The optima...
We investigate the nonparametric bivariate additive regression estimation in the random design and l...
We present a new approach of nonparametric regression with wavelets if the design is stochastic. In ...
The purpose of this paper is to investigate the numerical performances of the hard thresholding proc...
Abstract: We investigate global performances of non-linear wavelet estimation in regression models w...
We show that for nonparametric regression if the samples have random uniform design, the wavelet met...
We investigate the estimation of the derivatives of a regression function in the nonparametric regre...
Abstract: We give a unified, non-iterative formulation for wavelet estimators that can be applied in...
We investigate the estimation of the derivatives of a regression function in the nonparametric regre...
The current research on wavelet regression has been mostly focused on equispaced samples. In general...