In many situations information from a sample of individuals can be supplemented by population level information on the relationship between a dependent and explanatory variables. Inclusion of the population level information can reduce bias and increase the efficiency of the parameter estimates. Population level information can be incorporated via constraints on the model parameters. In general the constraints are nonlinear making the task of maximum likelihood estimation harder. In this paper we develop an alternative approach exploiting the notion of an empirical likelihood. It is shown that within the framework of generalised linear models, the population level information corresponds to linear constraints, which are comparatively easy t...
Empirical likelihood is a non-parametric, likelihood-based inference approach. In the design-based e...
Complex designs are often used to select the sample which is followed over time in a panel survey. W...
In the analysis of contingency tables, often one faces two difficult criteria: sampled and target po...
HD043472-01. The authors would like to thank Thomas S. Richardson, Antar Bandyopadhyay and Ryan Admi...
In many situations information from a sample of individuals can be supplemented by population level ...
10.1111/j.1467-9868.2007.00637.xJournal of the Royal Statistical Society. Series B: Statistical Meth...
In non-experimental research, data on the same population process may be collected simultaneously by...
In non-experimental research, data on the same population process may be collected simultaneously by...
It is common to have knowledge about the unknown parameters of a demographic model which restricts t...
Analysis of survey data does not happen in a vacuum. We typically know more about the target populat...
Currently, the high-precision estimation of nonlinear parameters such as Gini in-dices, low-income p...
A maximum likelihood (ML) estimation procedure is developed to find the mean of the exponential fami...
We propose a simple alternative empirical likelihood (EL) method in linear regression which requires...
Berger and De La Riva Torres (2012), proposed a proper empirical likelihood approach which can be us...
This paper extends a recent report on a model to establish population characteristics to include cen...
Empirical likelihood is a non-parametric, likelihood-based inference approach. In the design-based e...
Complex designs are often used to select the sample which is followed over time in a panel survey. W...
In the analysis of contingency tables, often one faces two difficult criteria: sampled and target po...
HD043472-01. The authors would like to thank Thomas S. Richardson, Antar Bandyopadhyay and Ryan Admi...
In many situations information from a sample of individuals can be supplemented by population level ...
10.1111/j.1467-9868.2007.00637.xJournal of the Royal Statistical Society. Series B: Statistical Meth...
In non-experimental research, data on the same population process may be collected simultaneously by...
In non-experimental research, data on the same population process may be collected simultaneously by...
It is common to have knowledge about the unknown parameters of a demographic model which restricts t...
Analysis of survey data does not happen in a vacuum. We typically know more about the target populat...
Currently, the high-precision estimation of nonlinear parameters such as Gini in-dices, low-income p...
A maximum likelihood (ML) estimation procedure is developed to find the mean of the exponential fami...
We propose a simple alternative empirical likelihood (EL) method in linear regression which requires...
Berger and De La Riva Torres (2012), proposed a proper empirical likelihood approach which can be us...
This paper extends a recent report on a model to establish population characteristics to include cen...
Empirical likelihood is a non-parametric, likelihood-based inference approach. In the design-based e...
Complex designs are often used to select the sample which is followed over time in a panel survey. W...
In the analysis of contingency tables, often one faces two difficult criteria: sampled and target po...