AbstractPseudo-empirical likelihood estimation of the population mean is considered. A nonparametric regression theory is proposed, to provide the fitted values on which to calibrate, and the common model misspecification problem is therefore addressed. Results derived from empirical studies show that the proposed estimator for the population mean can perform better than alternative estimators
Empirical likelihood methods are widely used in different settings to construct the confidence regio...
AbstractWe propose an empirical likelihood-based estimation method for conditional estimating equati...
Empirical likelihood, first introduced by Owen (1988, 1990), is a nonparametric method in statistica...
AbstractPseudo-empirical likelihood estimation of the population mean is considered. A nonparametric...
Empirical likelihood is a popular tool for incorporating auxiliary information and constructing nonp...
In this article, a naive empirical likelihood ratio is constructed for a non-parametric regression m...
The approach proposed gives design-consistent estimators of parameters which are solutions of estima...
Auxiliary information is frequently used in survey sampling at the estimation stage to increase the ...
The efficient use of auxiliary information to improve the precision of estimation of population quan...
AbstractIn this paper, we consider the application of the empirical likelihood method to partially l...
An empirical likelihood (EL) estimator was proposed by Qin and Zhang (2007) for a missing response p...
Empirical likelihood is a non-parametric, likelihood-based inference approach. In the design-based e...
In the presence of nuisance parameters, we discuss a one-parameter Bayesian analysis based on a pseu...
The likelihood for generalized linear models with covariate measurement error cannot in general be e...
The aim of this paper is to show that existing estimators for the error distribution in nonparametri...
Empirical likelihood methods are widely used in different settings to construct the confidence regio...
AbstractWe propose an empirical likelihood-based estimation method for conditional estimating equati...
Empirical likelihood, first introduced by Owen (1988, 1990), is a nonparametric method in statistica...
AbstractPseudo-empirical likelihood estimation of the population mean is considered. A nonparametric...
Empirical likelihood is a popular tool for incorporating auxiliary information and constructing nonp...
In this article, a naive empirical likelihood ratio is constructed for a non-parametric regression m...
The approach proposed gives design-consistent estimators of parameters which are solutions of estima...
Auxiliary information is frequently used in survey sampling at the estimation stage to increase the ...
The efficient use of auxiliary information to improve the precision of estimation of population quan...
AbstractIn this paper, we consider the application of the empirical likelihood method to partially l...
An empirical likelihood (EL) estimator was proposed by Qin and Zhang (2007) for a missing response p...
Empirical likelihood is a non-parametric, likelihood-based inference approach. In the design-based e...
In the presence of nuisance parameters, we discuss a one-parameter Bayesian analysis based on a pseu...
The likelihood for generalized linear models with covariate measurement error cannot in general be e...
The aim of this paper is to show that existing estimators for the error distribution in nonparametri...
Empirical likelihood methods are widely used in different settings to construct the confidence regio...
AbstractWe propose an empirical likelihood-based estimation method for conditional estimating equati...
Empirical likelihood, first introduced by Owen (1988, 1990), is a nonparametric method in statistica...