We propose a wavelet-based technique for the nonparametric estimation of functions contaminated with noise whose mean and variance are linked via a possibly unknown variance function. Our method, termed the data-driven wavelet-Fisz technique, consists of estimating the variance function via a Nadaraya-Watson estimator, and then performing a wavelet thresholding procedurewhich uses the estimated variance function and local means of the data to set the thresholds at a suitable level. We demonstrate the mean-square near-optimality of our wavelet esti- mator over the usual range of Besov classes. To achieve this, we establish an exponential inequality for the Nadaraya-Watson variance function esti- mator. We discuss various implementation issue...
This paper deals with density and regression estimation problems for functional data. Using wavelet ...
. Various aspects of the wavelet approach to nonparametric regression are considered, with the overa...
International audienceWe consider the estimation of an unknown regression function from a nonparamet...
We propose a wavelet-based technique for the nonparametric estimation of functions contaminated with...
This overview article motivates the use of wavelets in statistics, and introduces the basic mathemat...
This overview article motivates the use of wavelets in statistics, and introduces the basic mathemat...
We suggest a new approach to wavelet threshold estimation of spectral densities of stationary time s...
In this research, we explore the applications of wavelet theory in nonparametric regression and dens...
International audienceThe development of wavelet theory has in recent years spawned applications in ...
We propose a new approach to wavelet threshold estimation of spectral densities of stationary time s...
International audienceWavelet analysis has been found to be a powerful tool for the nonparametric es...
Wavelet analysis has been found to be a powerful tool for the nonparametric estimation of spatially-...
We consider a wavelet thresholding approach to adaptive variance function esti-mation in heterosceda...
Wavelet thresholding methods, especially those which pool information from geometric structures in t...
We consider a wavelet thresholding approach to adaptive variance function estimation in heteroscedas...
This paper deals with density and regression estimation problems for functional data. Using wavelet ...
. Various aspects of the wavelet approach to nonparametric regression are considered, with the overa...
International audienceWe consider the estimation of an unknown regression function from a nonparamet...
We propose a wavelet-based technique for the nonparametric estimation of functions contaminated with...
This overview article motivates the use of wavelets in statistics, and introduces the basic mathemat...
This overview article motivates the use of wavelets in statistics, and introduces the basic mathemat...
We suggest a new approach to wavelet threshold estimation of spectral densities of stationary time s...
In this research, we explore the applications of wavelet theory in nonparametric regression and dens...
International audienceThe development of wavelet theory has in recent years spawned applications in ...
We propose a new approach to wavelet threshold estimation of spectral densities of stationary time s...
International audienceWavelet analysis has been found to be a powerful tool for the nonparametric es...
Wavelet analysis has been found to be a powerful tool for the nonparametric estimation of spatially-...
We consider a wavelet thresholding approach to adaptive variance function esti-mation in heterosceda...
Wavelet thresholding methods, especially those which pool information from geometric structures in t...
We consider a wavelet thresholding approach to adaptive variance function estimation in heteroscedas...
This paper deals with density and regression estimation problems for functional data. Using wavelet ...
. Various aspects of the wavelet approach to nonparametric regression are considered, with the overa...
International audienceWe consider the estimation of an unknown regression function from a nonparamet...