It has been shown in recent years that quotient (Nadaraya-Watson) and convolution (Priestley-Chao or Gasser-Müller)-type kernel estimators both have distinct disadvantages when applied in random design nonparametric regression settings. Improved asymptotic behavior is achieved by the locally weighted least-squares estimator fitting local lines. We investigate the question whether this supreme asymptotic behavior can be achieved by directly modified versions of the Nadaraya-Watson estimator. It is shown that one modified version, the "Density Adjusted Kernel Smoother (DAKS)" which is introduced here, achieves, in fact, the same desirable asymptotic distribution characteristics as the locally weighted least-squares estimator. This yields an a...
Kernel density estimators have been studied in great detail. In this note a new family of kernels, d...
This paper considers a nonstandard kernel regression for strongly mixing processes when the regresso...
Abstract: Weighting is a widely used concept in many fields of statistics and has frequently caused ...
We explore the aims of, and relationships between, various kernel-type regression estimators. To do ...
Two common kernel-based methods for non-parametric repression estimation suffer from well-known draw...
Two common kernel-based methods for non-parametric repression estimation suffer from well-known draw...
Two common kernel-based methods for non-parametric repression estimation suffer from well-known draw...
Convolution type kernel estimators such as the Priestley-Chao estimator have been discussed by sever...
[[abstract]]The bias of kernel methods based on local constant fits can have an adverse effect when ...
The purpose of this study is to determine the effect of three improvement methods on nonparametric k...
We consider a random design model based on independent and identically distributed (iid) pairs of ob...
Stuetzle and Mittal (1979) for ordinary nonparametric kernel regression and Kauermann and Tutz (1996...
In the fixed design regression model, additional weights are considered for the Nadaraya--Watson an...
[[abstract]]In the case of the multivariate random design nonparametric regression, an interpolation...
Abstract—We consider a random design model based on independent and identically distributed pairs of...
Kernel density estimators have been studied in great detail. In this note a new family of kernels, d...
This paper considers a nonstandard kernel regression for strongly mixing processes when the regresso...
Abstract: Weighting is a widely used concept in many fields of statistics and has frequently caused ...
We explore the aims of, and relationships between, various kernel-type regression estimators. To do ...
Two common kernel-based methods for non-parametric repression estimation suffer from well-known draw...
Two common kernel-based methods for non-parametric repression estimation suffer from well-known draw...
Two common kernel-based methods for non-parametric repression estimation suffer from well-known draw...
Convolution type kernel estimators such as the Priestley-Chao estimator have been discussed by sever...
[[abstract]]The bias of kernel methods based on local constant fits can have an adverse effect when ...
The purpose of this study is to determine the effect of three improvement methods on nonparametric k...
We consider a random design model based on independent and identically distributed (iid) pairs of ob...
Stuetzle and Mittal (1979) for ordinary nonparametric kernel regression and Kauermann and Tutz (1996...
In the fixed design regression model, additional weights are considered for the Nadaraya--Watson an...
[[abstract]]In the case of the multivariate random design nonparametric regression, an interpolation...
Abstract—We consider a random design model based on independent and identically distributed pairs of...
Kernel density estimators have been studied in great detail. In this note a new family of kernels, d...
This paper considers a nonstandard kernel regression for strongly mixing processes when the regresso...
Abstract: Weighting is a widely used concept in many fields of statistics and has frequently caused ...