Standard wavelet shrinkage procedures for nonparametric regression are restricted to equispaced samples. There, data are transformed into empirical wavelet coefficients and threshold rules are applied to the coefficients. The estimators are obtained via the inverse transform of the denoised wavelet coefficients. In many applications, however, the samples are nonequispaced. It can be shown that these procedures would produce suboptimal estimators if they were applied directly to nonequispaced samples. We propose a wavelet shrinkage procedure for nonequispaced samples. We show that the estimate is adaptive and near optimal. For global estimation, the estimate is within a logarithmic factor of the minimax risk over a wide range of piecewise Hö...
In this paper we develop a nonparametric regression method that is simultaneously adaptive over a wi...
Density estimation is a commonly used test case for non-parametric estimation methods. We explore th...
We study wavelet function estimation via the approach of block thresholding and ideal adaptation wit...
Standard wavelet shrinkage procedures for nonparametric regression are restricted to equispaced samp...
We show that for nonparametric regression if the samples have random uniform design, the wavelet met...
We show that for nonparametric regression if the samples have random uniform design, the wavelet met...
We show that for nonparametric regression if the samples have random uniform design, the wavelet met...
We show that for nonparametric regression if the samples have random uniform design, the wavelet met...
The current research on wavelet regression has been mostly focused on equispaced samples. In general...
We consider the nonparametric regression estimation problem of recovering an unknown response functi...
We study wavelet function estimation via the approach of block thresholding and ideal adaptation wit...
A theory of superefficiency and adaptation is developed under flexible performance measures which gi...
International audienceWavelet transforms are said to be sparse in that they represent smooth andpiec...
International audienceWavelet transforms are said to be sparse in that they represent smooth andpiec...
International audienceWavelet transforms are said to be sparse in that they represent smooth andpiec...
In this paper we develop a nonparametric regression method that is simultaneously adaptive over a wi...
Density estimation is a commonly used test case for non-parametric estimation methods. We explore th...
We study wavelet function estimation via the approach of block thresholding and ideal adaptation wit...
Standard wavelet shrinkage procedures for nonparametric regression are restricted to equispaced samp...
We show that for nonparametric regression if the samples have random uniform design, the wavelet met...
We show that for nonparametric regression if the samples have random uniform design, the wavelet met...
We show that for nonparametric regression if the samples have random uniform design, the wavelet met...
We show that for nonparametric regression if the samples have random uniform design, the wavelet met...
The current research on wavelet regression has been mostly focused on equispaced samples. In general...
We consider the nonparametric regression estimation problem of recovering an unknown response functi...
We study wavelet function estimation via the approach of block thresholding and ideal adaptation wit...
A theory of superefficiency and adaptation is developed under flexible performance measures which gi...
International audienceWavelet transforms are said to be sparse in that they represent smooth andpiec...
International audienceWavelet transforms are said to be sparse in that they represent smooth andpiec...
International audienceWavelet transforms are said to be sparse in that they represent smooth andpiec...
In this paper we develop a nonparametric regression method that is simultaneously adaptive over a wi...
Density estimation is a commonly used test case for non-parametric estimation methods. We explore th...
We study wavelet function estimation via the approach of block thresholding and ideal adaptation wit...