In Mombeni et al. (2019), Birnbaum-Saunders and Weibull kernel estimators were introduced for the estimation of cumulative distribution functions (c.d.f.s) supported on the half-line $[0,\infty)$. They were the first authors to use asymmetric kernels in the context of c.d.f. estimation. Their estimators were shown to perform better numerically than traditional methods such as the basic kernel method and the boundary modified version from Tenreiro (2013). In the present paper, we complement their study by introducing five new asymmetric kernel c.d.f. estimators, namely the Gamma, inverse Gamma, lognormal, inverse Gaussian and reciprocal inverse Gaussian kernel c.d.f. estimators. For these five new estimators, we prove the asymptotic normalit...
Kernel estimators of both density and regression functions are not consistent near the nite end poin...
Doctor of PhilosophyDepartment of StatisticsWeixing SongKernel based non-parametric regression is a ...
Discrete kernel smoothing is now gaining importance in nonparametric statistics. In this paper, we i...
In this paper, we complement a study recently conducted in a paper of H.A. Mombeni, B. Masouri and M...
This article considers smooth density estimation based on length biased data that involves a random ...
In this article a new nonparametric density estimator based on the sequence of asymmetric kernels is...
The kernel distribution function estimator method is the most popular nonparametric method to estima...
Kernel estimation is one of the most important data analytical tool, if we consider the non parametr...
In the paper methods of reducing the so-called boundary effects, which appear in the estimation of c...
A modified gamma kernel should not be automatically preferred to the standard gamma kernel, especial...
The problems with using the symmetric kernels for nonparametric density and regression estimators f...
This paper considers a nonstandard kernel regression for strongly mixing processes when the regresso...
Standard fixed symmetric kernel type density estimators are known to encounter problems for positive...
In this article we propose two new Multiplicative Bias Correction (MBC) techniques for nonparametric...
Nonparametric prediction of a random variable Y conditional on the value of an explanatory variable ...
Kernel estimators of both density and regression functions are not consistent near the nite end poin...
Doctor of PhilosophyDepartment of StatisticsWeixing SongKernel based non-parametric regression is a ...
Discrete kernel smoothing is now gaining importance in nonparametric statistics. In this paper, we i...
In this paper, we complement a study recently conducted in a paper of H.A. Mombeni, B. Masouri and M...
This article considers smooth density estimation based on length biased data that involves a random ...
In this article a new nonparametric density estimator based on the sequence of asymmetric kernels is...
The kernel distribution function estimator method is the most popular nonparametric method to estima...
Kernel estimation is one of the most important data analytical tool, if we consider the non parametr...
In the paper methods of reducing the so-called boundary effects, which appear in the estimation of c...
A modified gamma kernel should not be automatically preferred to the standard gamma kernel, especial...
The problems with using the symmetric kernels for nonparametric density and regression estimators f...
This paper considers a nonstandard kernel regression for strongly mixing processes when the regresso...
Standard fixed symmetric kernel type density estimators are known to encounter problems for positive...
In this article we propose two new Multiplicative Bias Correction (MBC) techniques for nonparametric...
Nonparametric prediction of a random variable Y conditional on the value of an explanatory variable ...
Kernel estimators of both density and regression functions are not consistent near the nite end poin...
Doctor of PhilosophyDepartment of StatisticsWeixing SongKernel based non-parametric regression is a ...
Discrete kernel smoothing is now gaining importance in nonparametric statistics. In this paper, we i...