In this paper we propose a variable bandwidth kernel regression estimator for i.i.d. observations in ℝ2 to improve the classical Nadaraya-Watson estimator. The bias is improved to the order of O(hn4) under the condition that the fifth order derivative of the density function and the sixth order derivative of the regression function are bounded and continuous. We also establish the central limit theorems for the proposed ideal and true variable kernel regression estimators. The simulation study confirms our results and demonstrates the advantage of the variable bandwidth kernel method over the classical kernel method
AbstractThis paper investigates performance of nonparametric kernel regression and its associated ba...
Recently, much progress has been made on understanding the bandwidth selection problem in kernel den...
Abstract Multivariate versions of variable bandwidth kernel density estimators can lead to improveme...
We study the ideal variable bandwidth kernel density estimator introduced by McKay (1993) and the pl...
We study the ideal variable bandwidth kernel density estimator introduced by McKay (1993) and the pl...
We study the ideal variable bandwidth kernel density estimator introduced by McKay (1993) and the pl...
Variable bandwidth kernel density estimators increase the window width at low densities and decrease...
Variable bandwidth kernel density estimators increase the window width at low densities and decrease...
In this paper, the problem of estimating the mode of a probability density function has been studied...
The nature of the kernel density estimator (KDE) is to find the underlying probability density funct...
This paper develops a sampling algorithm for bandwidth estimation in a nonparametric regression mode...
This paper develops a sampling algorithm for bandwidth estimation in a nonparametric regression mode...
A crucial problem in kernel density estimates of a probability density function is the selection of ...
In this study, we examined the relationship between the independent x and dependent y variables, and...
Abstract. We consider pointwise consistency properties of kernel regression function type estimators...
AbstractThis paper investigates performance of nonparametric kernel regression and its associated ba...
Recently, much progress has been made on understanding the bandwidth selection problem in kernel den...
Abstract Multivariate versions of variable bandwidth kernel density estimators can lead to improveme...
We study the ideal variable bandwidth kernel density estimator introduced by McKay (1993) and the pl...
We study the ideal variable bandwidth kernel density estimator introduced by McKay (1993) and the pl...
We study the ideal variable bandwidth kernel density estimator introduced by McKay (1993) and the pl...
Variable bandwidth kernel density estimators increase the window width at low densities and decrease...
Variable bandwidth kernel density estimators increase the window width at low densities and decrease...
In this paper, the problem of estimating the mode of a probability density function has been studied...
The nature of the kernel density estimator (KDE) is to find the underlying probability density funct...
This paper develops a sampling algorithm for bandwidth estimation in a nonparametric regression mode...
This paper develops a sampling algorithm for bandwidth estimation in a nonparametric regression mode...
A crucial problem in kernel density estimates of a probability density function is the selection of ...
In this study, we examined the relationship between the independent x and dependent y variables, and...
Abstract. We consider pointwise consistency properties of kernel regression function type estimators...
AbstractThis paper investigates performance of nonparametric kernel regression and its associated ba...
Recently, much progress has been made on understanding the bandwidth selection problem in kernel den...
Abstract Multivariate versions of variable bandwidth kernel density estimators can lead to improveme...