[[abstract]]The bias of kernel methods based on local constant fits can have an adverse effect when the derivative of the marginal density or that of the regression function is large. The drawback can be repaired by considering a class of kernel estimators based on local linear fits. These estimators have the desired asymptotic properties and can be used to estimate conditional quantiles and to robustify the usual mean regression. The conditional asymptotic normality of these estimators at both boundary and interior points is established. An important consequence of the study is that the proposed method has the desired sampling properties at both boundary and interior points of the support of the design density. Therefore, our procedure doe...
AbstractA robust estimator of the regression function is proposed combining kernel methods as introd...
Abstract: Local linear kernel methods have been shown to dominate local constant methods for the non...
We consider local polynomial fitting for estimating a regression function and its derivatives nonpar...
In this article we study nonparametric regression quantile estimation by kernel weighted local linea...
Nonparametric regression is a standard statistical tool with increased importance in the Big Data er...
Local kernel estimates and B-spline estimates are considered in the nonparametric regression and the...
In this paper we define a robust conditional location functional without requiring any moment condit...
It has been shown in recent years that quotient (Nadaraya-Watson) and convolution (Priestley-Chao or...
Abstract: We consider the problem of nonparametrically estimating the conditional quantile function ...
This paper develops a nonparametric density estimator with parametric overtones. Suppose f(x, θ) is ...
This paper studies robust estimation of multivariate regression model using kernel weighted local li...
In this thesis, attention will be mainly focused on the local linear kernel regression quantile esti...
AbstractIn this paper we define a robust conditional location functional without requiring any momen...
This thesis is focused on local polynomial smoothers of the conditional vari- ance function in a het...
We explore the aims of, and relationships between, various kernel-type regression estimators. To do ...
AbstractA robust estimator of the regression function is proposed combining kernel methods as introd...
Abstract: Local linear kernel methods have been shown to dominate local constant methods for the non...
We consider local polynomial fitting for estimating a regression function and its derivatives nonpar...
In this article we study nonparametric regression quantile estimation by kernel weighted local linea...
Nonparametric regression is a standard statistical tool with increased importance in the Big Data er...
Local kernel estimates and B-spline estimates are considered in the nonparametric regression and the...
In this paper we define a robust conditional location functional without requiring any moment condit...
It has been shown in recent years that quotient (Nadaraya-Watson) and convolution (Priestley-Chao or...
Abstract: We consider the problem of nonparametrically estimating the conditional quantile function ...
This paper develops a nonparametric density estimator with parametric overtones. Suppose f(x, θ) is ...
This paper studies robust estimation of multivariate regression model using kernel weighted local li...
In this thesis, attention will be mainly focused on the local linear kernel regression quantile esti...
AbstractIn this paper we define a robust conditional location functional without requiring any momen...
This thesis is focused on local polynomial smoothers of the conditional vari- ance function in a het...
We explore the aims of, and relationships between, various kernel-type regression estimators. To do ...
AbstractA robust estimator of the regression function is proposed combining kernel methods as introd...
Abstract: Local linear kernel methods have been shown to dominate local constant methods for the non...
We consider local polynomial fitting for estimating a regression function and its derivatives nonpar...