Nonparametric and semiparametric regression models are useful statistical regression models to discover nonlinear relationships between the response variable and predictor variables. However, optimal efficient estimators for the nonparametric components in the models are biased which hinders the development of methods for further statistical inference. In this paper, based on the local linear fitting, we propose a simple bias reduction approach for the estimation of the nonparametric regression model. Our approach does not need to use higher-order local polynomial regression to estimate the bias, and hence avoids the double bandwidth selection and design sparsity problems suffered by higher-order local polynomial fitting. It also does not i...
Stuetzle and Mittal (1979) for ordinary nonparametric kernel regression and Kauermann and Tutz (1996...
The paper presents a multiplicative bias reduction estimator for nonparametric regression. The appro...
Varying coefficient models are useful extensions of the classical linear models. Under the condition...
The local polynomial estimator is particularly affected by the curse of dimensionality, which reduce...
The local polynomial estimator is particularly affected by the curse of dimensionality, which reduce...
The local polynomial estimator is particularly affected by the curse of dimensionality, which reduce...
The local polynomial estimator is particularly affected by the curse of dimensionality, which reduce...
The local polynomial estimator is particularly affected by the curse of dimensionality, which reduce...
We propose and investigate two new methods for achieving less bias in non- parametric regression. We...
This thesis is focused on local polynomial smoothers of the conditional vari- ance function in a het...
This paper proposes a new nonparametric test for the hypothesis that the regression functions in two...
Nonlinear systems might be estimated, using local linear models. If the estimation data is corrupted...
The conditional variance function in a heteroscedastic, nonparametric regression model is estimated ...
Nonlinear systems might be estimated, using local linear models. If the estimation data is corrupted...
AbstractVarying coefficient models are useful extensions of the classical linear models. Under the c...
Stuetzle and Mittal (1979) for ordinary nonparametric kernel regression and Kauermann and Tutz (1996...
The paper presents a multiplicative bias reduction estimator for nonparametric regression. The appro...
Varying coefficient models are useful extensions of the classical linear models. Under the condition...
The local polynomial estimator is particularly affected by the curse of dimensionality, which reduce...
The local polynomial estimator is particularly affected by the curse of dimensionality, which reduce...
The local polynomial estimator is particularly affected by the curse of dimensionality, which reduce...
The local polynomial estimator is particularly affected by the curse of dimensionality, which reduce...
The local polynomial estimator is particularly affected by the curse of dimensionality, which reduce...
We propose and investigate two new methods for achieving less bias in non- parametric regression. We...
This thesis is focused on local polynomial smoothers of the conditional vari- ance function in a het...
This paper proposes a new nonparametric test for the hypothesis that the regression functions in two...
Nonlinear systems might be estimated, using local linear models. If the estimation data is corrupted...
The conditional variance function in a heteroscedastic, nonparametric regression model is estimated ...
Nonlinear systems might be estimated, using local linear models. If the estimation data is corrupted...
AbstractVarying coefficient models are useful extensions of the classical linear models. Under the c...
Stuetzle and Mittal (1979) for ordinary nonparametric kernel regression and Kauermann and Tutz (1996...
The paper presents a multiplicative bias reduction estimator for nonparametric regression. The appro...
Varying coefficient models are useful extensions of the classical linear models. Under the condition...