In this paper, the proposed estimator for the unknown nonparametric regression function is a Nadarya-Watson (Nadarya, 1964; Watson, 1964) type kernel estimator. In this estimation procedure, the censored observations are replaced by synthetic data points based on Kaplan-Meier estimator. As known performance of the kernel estimator depends on the selection of a bandwidth parameter. To get an optimum parameter we have considered six selection methods such as the improved version of Akaike information criterion (AICc), Bayesian information criterion (BIC), generalized cross validation (GCV), risk estimation with classical pilots (RECP), Mallow’s Cp criterion and restricted empirical likelihood (REML), respectively. In addition, we discuss the ...
In this paper, two types of kernel based estimators of hazard rate under left truncation and right c...
In the present paper we combine the issues of bandwidth choice and construction of confidence interv...
Allthough nonparametric kernel density estimation is nowadays a standard technique in explorative da...
In the context of nonparametric regression estimation, the behaviour of kernel methods such as the N...
Härdle W, Marron JS. Optimal Bandwidth Selection in Nonparametric Regression Function Estimation. Th...
This paper develops a sampling algorithm for bandwidth estimation in a nonparametric regression mode...
This paper develops a sampling algorithm for bandwidth estimation in a nonparametric regression mode...
This paper is concerned with data-based selection of the bandwidth for a data sharpening estimator i...
In this study, kernel smoothing method is considered in the estimation of nonparametric regression m...
AbstractThis note concentrates on the nonparametric estimation of a probability mass function (p.m.f...
This paper introduces the operating of the selection criteria for right-censored nonparametric regre...
We propose two novel bandwidth selection procedures for the nonparametric regression model with clas...
Quantile and semiparametric M estimation are methods for estimating a censored linear regression mod...
In this paper, two types of kernel based estimators of hazard rate under left truncation and right c...
AbstractFor nonparametric regression model with fixed design, it is well known that obtaining a corr...
In this paper, two types of kernel based estimators of hazard rate under left truncation and right c...
In the present paper we combine the issues of bandwidth choice and construction of confidence interv...
Allthough nonparametric kernel density estimation is nowadays a standard technique in explorative da...
In the context of nonparametric regression estimation, the behaviour of kernel methods such as the N...
Härdle W, Marron JS. Optimal Bandwidth Selection in Nonparametric Regression Function Estimation. Th...
This paper develops a sampling algorithm for bandwidth estimation in a nonparametric regression mode...
This paper develops a sampling algorithm for bandwidth estimation in a nonparametric regression mode...
This paper is concerned with data-based selection of the bandwidth for a data sharpening estimator i...
In this study, kernel smoothing method is considered in the estimation of nonparametric regression m...
AbstractThis note concentrates on the nonparametric estimation of a probability mass function (p.m.f...
This paper introduces the operating of the selection criteria for right-censored nonparametric regre...
We propose two novel bandwidth selection procedures for the nonparametric regression model with clas...
Quantile and semiparametric M estimation are methods for estimating a censored linear regression mod...
In this paper, two types of kernel based estimators of hazard rate under left truncation and right c...
AbstractFor nonparametric regression model with fixed design, it is well known that obtaining a corr...
In this paper, two types of kernel based estimators of hazard rate under left truncation and right c...
In the present paper we combine the issues of bandwidth choice and construction of confidence interv...
Allthough nonparametric kernel density estimation is nowadays a standard technique in explorative da...