This paper develops a sampling algorithm for bandwidth estimation in a nonparametric regression model with continuous and discrete regressors under an unknown error density. The error density is approximated by the kernel density estimator of the unobserved errors, while the regression function is estimated using the Nadaraya-Watson estimator admitting continuous and discrete regressors. We derive an approximate likelihood and posterior for bandwidth parameters, followed by a sampling algorithm. Simulation results show that the proposed approach typically leads to better accuracy of the resulting estimates than cross-validation, particularly for smaller sample sizes. This bandwidth estimation approach is applied to nonparametric regression ...
Härdle W, Marron JS. Optimal Bandwidth Selection in Nonparametric Regression Function Estimation. Th...
This paper is concerned with data-based selection of the bandwidth for a data sharpening estimator i...
Nonparametric estimation of abrupt changes in a regression function involves choosing smoothing (ban...
This paper develops a sampling algorithm for bandwidth estimation in a nonparametric regression mode...
The unknown error density of a nonparametric regression model is approximated by a mixture of Gaussi...
This thesis investigates three main topics, which are bandwidth selection for local linear estimatio...
In the context of nonparametric regression estimation, the behaviour of kernel methods such as the N...
In the context of nonparametric regression estimation, the behaviour of kernel methods such as the N...
We propose two novel bandwidth selection procedures for the nonparametric regression model with clas...
<p>Bandwidth plays an important role in determining the performance of nonparametric estimators, suc...
In this paper, the proposed estimator for the unknown nonparametric regression function is a Nadarya...
Error density estimation in a nonparametric functional regression model with functional predictor an...
Kernel density estimation is one of the most important techniques for understanding the distribution...
In the context of semi-functional partial linear regression model, we study the problem of error den...
AbstractThis note concentrates on the nonparametric estimation of a probability mass function (p.m.f...
Härdle W, Marron JS. Optimal Bandwidth Selection in Nonparametric Regression Function Estimation. Th...
This paper is concerned with data-based selection of the bandwidth for a data sharpening estimator i...
Nonparametric estimation of abrupt changes in a regression function involves choosing smoothing (ban...
This paper develops a sampling algorithm for bandwidth estimation in a nonparametric regression mode...
The unknown error density of a nonparametric regression model is approximated by a mixture of Gaussi...
This thesis investigates three main topics, which are bandwidth selection for local linear estimatio...
In the context of nonparametric regression estimation, the behaviour of kernel methods such as the N...
In the context of nonparametric regression estimation, the behaviour of kernel methods such as the N...
We propose two novel bandwidth selection procedures for the nonparametric regression model with clas...
<p>Bandwidth plays an important role in determining the performance of nonparametric estimators, suc...
In this paper, the proposed estimator for the unknown nonparametric regression function is a Nadarya...
Error density estimation in a nonparametric functional regression model with functional predictor an...
Kernel density estimation is one of the most important techniques for understanding the distribution...
In the context of semi-functional partial linear regression model, we study the problem of error den...
AbstractThis note concentrates on the nonparametric estimation of a probability mass function (p.m.f...
Härdle W, Marron JS. Optimal Bandwidth Selection in Nonparametric Regression Function Estimation. Th...
This paper is concerned with data-based selection of the bandwidth for a data sharpening estimator i...
Nonparametric estimation of abrupt changes in a regression function involves choosing smoothing (ban...