Nonparametric kernel estimators are mostly used in a variety of statistical research fields. Nadaraya-Watson kernel estimator (NWK) is one of the most important nonparametric kernel estimator that is often used in regression models with a fixed bandwidth. In this article, we consider the four new Proposed Adaptive Nadaraya-Watson Kernel Regression Estimators (Interquartile Range, Standard Deviation, Mean Absolute Devotion, and Median Absolute Deviation) rather than (Fixed Bandwidth, Adaptive Geometric, Adaptive Mean, Adaptive Range, and Adaptive Median). The outcomes in both simulation and actual data in Leukemia Cancer show that the four new ANW Kernel Estimators (Interquartile Range, Standard Deviation, Mean Absolute devotion, and Median ...
In this paper, we investigate the finite sample performance of four kernel-based estimators that are...
This thesis explores the practical use of kernel smoothing in three areas: binary regression, densit...
We consider a random design model based on independent and identically distributed pairs of observat...
Nonparametric kernel estimators are mostly used in a variety of statistical research fields. Nadaray...
The purpose of this study is to determine the effect of three improvement methods on nonparametric k...
Regression analysis is one of statistical analysis usually used to investigate the pattern of functi...
MSc (Statistics), North-West University, Potchefstroom Campus, 2015The purpose of this study is to d...
dth: 0px; "> Given a data set (xi , yi ) and connecting between xi and yi be assumed to follownon...
In this study, kernel smoothing method is considered in the estimation of nonparametric regression m...
We review different approaches to nonparametric density and regression estimation. Kernel estimators ...
For univariate i.i.d. samples, analyses are usually performed on observations themselves, or on the ...
Doctor of PhilosophyDepartment of StatisticsWeixing SongKernel based non-parametric regression is a ...
The problems with using the symmetric kernels for nonparametric density and regression estimators f...
The estimation of an unknown probability density functions of a random variable or its distribution ...
This article compared the performance between finite order kernel (normal) and infinite order kernel...
In this paper, we investigate the finite sample performance of four kernel-based estimators that are...
This thesis explores the practical use of kernel smoothing in three areas: binary regression, densit...
We consider a random design model based on independent and identically distributed pairs of observat...
Nonparametric kernel estimators are mostly used in a variety of statistical research fields. Nadaray...
The purpose of this study is to determine the effect of three improvement methods on nonparametric k...
Regression analysis is one of statistical analysis usually used to investigate the pattern of functi...
MSc (Statistics), North-West University, Potchefstroom Campus, 2015The purpose of this study is to d...
dth: 0px; "> Given a data set (xi , yi ) and connecting between xi and yi be assumed to follownon...
In this study, kernel smoothing method is considered in the estimation of nonparametric regression m...
We review different approaches to nonparametric density and regression estimation. Kernel estimators ...
For univariate i.i.d. samples, analyses are usually performed on observations themselves, or on the ...
Doctor of PhilosophyDepartment of StatisticsWeixing SongKernel based non-parametric regression is a ...
The problems with using the symmetric kernels for nonparametric density and regression estimators f...
The estimation of an unknown probability density functions of a random variable or its distribution ...
This article compared the performance between finite order kernel (normal) and infinite order kernel...
In this paper, we investigate the finite sample performance of four kernel-based estimators that are...
This thesis explores the practical use of kernel smoothing in three areas: binary regression, densit...
We consider a random design model based on independent and identically distributed pairs of observat...