Vita.Two research areas that have generated a great deal of interest in the field of statistics are the change-point problem and nonparametric regression. This work is concerned with a melding of these two general ideas. In this situation, the interest is in estimating regression functions that are suspected to have abrupt jumps or other unusual features. Much of the current research in nonparametric regression involves methods which rely on various assumptions on the smoothness of the underlying function, so such methods are inappropriate in this setting. The field of wavelets has received a good amount of interest in many fields of applied mathematics for its ability to handle functions with jumps or other unusual features. The applicati...
International audienceWe propose a parametric wavelet thresholding procedure for estimation in the '...
In recent years there has been a considerable development in the use of wavelet methods in statistic...
Partially linear models have a linear part as in the linear regression and a non-linear part similar...
Wavelet analysis has been found to be a powerful tool for the nonparametric estimation of spatially-...
. Various aspects of the wavelet approach to nonparametric regression are considered, with the overa...
Abstract: In this paper we will present wavelet thresholding estimators in nonparametric regression ...
International audienceThe development of wavelet theory has in recent years spawned applications in ...
This paper is about using wavelets for regression. The main aim of the paper is to introduce and dev...
Wavelets have gained considerable popularity within the statistical arena in the context of nonparam...
In the modeling of biological phenomena, in living organisms whether the measurements are of blood p...
A bstract The wavelet transform was introduced in the 1980’s and it was developed as an alternative ...
In wavelet regression, choosing threshold value is a crucial issue. A too large value cuts too many ...
Wavelets are applied to detection of the jump points of a regression function in nonlinear autoregre...
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 overall...
International audienceWe propose a parametric wavelet thresholding procedure for estimation in the '...
In recent years there has been a considerable development in the use of wavelet methods in statistic...
Partially linear models have a linear part as in the linear regression and a non-linear part similar...
Wavelet analysis has been found to be a powerful tool for the nonparametric estimation of spatially-...
. Various aspects of the wavelet approach to nonparametric regression are considered, with the overa...
Abstract: In this paper we will present wavelet thresholding estimators in nonparametric regression ...
International audienceThe development of wavelet theory has in recent years spawned applications in ...
This paper is about using wavelets for regression. The main aim of the paper is to introduce and dev...
Wavelets have gained considerable popularity within the statistical arena in the context of nonparam...
In the modeling of biological phenomena, in living organisms whether the measurements are of blood p...
A bstract The wavelet transform was introduced in the 1980’s and it was developed as an alternative ...
In wavelet regression, choosing threshold value is a crucial issue. A too large value cuts too many ...
Wavelets are applied to detection of the jump points of a regression function in nonlinear autoregre...
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 overall...
International audienceWe propose a parametric wavelet thresholding procedure for estimation in the '...
In recent years there has been a considerable development in the use of wavelet methods in statistic...
Partially linear models have a linear part as in the linear regression and a non-linear part similar...