Consider a Gaussian nonparametric regression problem having both an unknown mean function and unknown variance function. This article presents a class of difference-based kernel estimators for the variance function. Optimal convergence rates that are uniform over broad functional classes and bandwidths are fully characterized, and asymptotic normality is also established. We also show that for suitable asymptotic formulations our estimators achieve the minimax rate
SUMMARY Several difference-based estimators of residual variance are compared for finite sample size...
International audienceIn this paper, we are interested in the problem of smoothing parameter select...
Abstract: Estimating the residual variance is an important question in nonparamet-ric regression. Am...
Traditionally, non-parametric regression research has been centered on the mean estimation problem. ...
Variance function estimation in multivariate nonparametric regression is considered and the minimax ...
Variance function estimation in nonparametric regression is considered and the minimax rate of conve...
We define and compute asymptotically optimal difference sequences for estimating error variance in h...
AbstractVariance function estimation in multivariate nonparametric regression is considered and the ...
The existing differenced estimators of error variance in nonparametric regression are interpreted a...
Variance function estimation in multivariate nonparametric regression is considered and the minimax ...
Variance function estimation in nonparametric regression is considered. We derived the minimax rate ...
Difference-based methods have been attracting increasing attention in nonparametric regression, in p...
For the heteroscedastic nonparametric regression model with unknown mean function f and variance fun...
Difference-based estimators for the error variance are popular since they do not require the estimat...
In this thesis, we take a fresh look at the error variance estimation in nonparametric regression mo...
SUMMARY Several difference-based estimators of residual variance are compared for finite sample size...
International audienceIn this paper, we are interested in the problem of smoothing parameter select...
Abstract: Estimating the residual variance is an important question in nonparamet-ric regression. Am...
Traditionally, non-parametric regression research has been centered on the mean estimation problem. ...
Variance function estimation in multivariate nonparametric regression is considered and the minimax ...
Variance function estimation in nonparametric regression is considered and the minimax rate of conve...
We define and compute asymptotically optimal difference sequences for estimating error variance in h...
AbstractVariance function estimation in multivariate nonparametric regression is considered and the ...
The existing differenced estimators of error variance in nonparametric regression are interpreted a...
Variance function estimation in multivariate nonparametric regression is considered and the minimax ...
Variance function estimation in nonparametric regression is considered. We derived the minimax rate ...
Difference-based methods have been attracting increasing attention in nonparametric regression, in p...
For the heteroscedastic nonparametric regression model with unknown mean function f and variance fun...
Difference-based estimators for the error variance are popular since they do not require the estimat...
In this thesis, we take a fresh look at the error variance estimation in nonparametric regression mo...
SUMMARY Several difference-based estimators of residual variance are compared for finite sample size...
International audienceIn this paper, we are interested in the problem of smoothing parameter select...
Abstract: Estimating the residual variance is an important question in nonparamet-ric regression. Am...