The standard approach to local linear regression involves fitting a straight line segment to a curve in a symmetrical way, in that the segment is fitted directly above a small region whose midpoint is the abscissa, x, at which we wish to estimate the curve. In this paper we show that, if the segment is fitted in a skew manner, with its centre a little to the left or right of x, then bias can be reduced by an order of magnitude, without affecting the order of magnitude of variance. The amount by which the centre should be shifted depends only on the kernel function, and not at all on the unknown regression mean or on the design density. The average of two similarly but oppositely shifted estimators has two orders of magnitude less bias, agai...
A new method for bias reduction in nonparametric density estimation is proposed. The method is a sim...
This paper deals with nonparametric estimation of a regression curve, where the estimation method sh...
symmetric and asymmetric weights. Following Henderson (1916) who devel-oped a smoothing measure as a...
We suggest an adaptive, error-dependent smoothing method for reducing the variance of local-linear c...
[[abstract]]A variance reduction technique in nonparametric smoothing is proposed: at each point of ...
Abstract: There has been much justifiable recent interest in local polynomial regression, and in par...
summary:For nonparametric estimation of a smooth regression function, local linear fitting is a wide...
Abstract: Weighting is a widely used concept in many fields of statistics and has frequently caused ...
none2Following Henderson (1916) who developed a smoothing measure as a function of the weight system...
Nonparametric and semiparametric regression models are useful statistical regression models to disco...
AbstractThis paper studies improvements of multivariate local linear regression. Two intuitively app...
The paper presents a multiplicative bias reduction estimator for nonparametric regression. The appro...
About the book: One of the main applications of statistical smoothing techniques is nonparametric r...
A technique is suggested for reducing the order of bias of kernel estimators by weighting the contri...
In this article, we propose a new method of bias reduction in nonparametric regression estimation. T...
A new method for bias reduction in nonparametric density estimation is proposed. The method is a sim...
This paper deals with nonparametric estimation of a regression curve, where the estimation method sh...
symmetric and asymmetric weights. Following Henderson (1916) who devel-oped a smoothing measure as a...
We suggest an adaptive, error-dependent smoothing method for reducing the variance of local-linear c...
[[abstract]]A variance reduction technique in nonparametric smoothing is proposed: at each point of ...
Abstract: There has been much justifiable recent interest in local polynomial regression, and in par...
summary:For nonparametric estimation of a smooth regression function, local linear fitting is a wide...
Abstract: Weighting is a widely used concept in many fields of statistics and has frequently caused ...
none2Following Henderson (1916) who developed a smoothing measure as a function of the weight system...
Nonparametric and semiparametric regression models are useful statistical regression models to disco...
AbstractThis paper studies improvements of multivariate local linear regression. Two intuitively app...
The paper presents a multiplicative bias reduction estimator for nonparametric regression. The appro...
About the book: One of the main applications of statistical smoothing techniques is nonparametric r...
A technique is suggested for reducing the order of bias of kernel estimators by weighting the contri...
In this article, we propose a new method of bias reduction in nonparametric regression estimation. T...
A new method for bias reduction in nonparametric density estimation is proposed. The method is a sim...
This paper deals with nonparametric estimation of a regression curve, where the estimation method sh...
symmetric and asymmetric weights. Following Henderson (1916) who devel-oped a smoothing measure as a...