Accounting for dependent informative sampling in model-based finite population inference

被引:0
|
作者
Isabel Molina
Malay Ghosh
机构
[1] Universidad Carlos III de Madrid,Department of Statistics
[2] University of Florida,Department of Statistics
来源
TEST | 2021年 / 30卷
关键词
Copulas; EM method; Maximum likelihood; Sample likelihood; Sample selection bias; 62D05; 62E99; 62G09;
D O I
暂无
中图分类号
学科分类号
摘要
The paper considers model-based inference for finite population parameters under informative sampling, when the draws of the different units are not independent and the joint selection probability is modeled using a copula. We extend the “sample likelihood” approach to the case of dependent draws and provide the expression of the likelihood given the selected sample, called here “selection likelihood”. We show how to derive maximum likelihood estimators of the model parameters based on the resulting selection likelihood. Further, we find optimal predictors of individual values and of finite population parameters under the proposed informative selection models. In an experiment based on the 1988 U.S. National Maternal and Infant Health Survey, results indicate that, for small sample size, the proposed selection likelihood method reduces systematically the bias and standard errors of the estimators obtained from the sample likelihood based on independent draws and become the same for large sample size. It reduces considerably the bias due to informativeness and gives more efficient estimators than the pseudo likelihood (or quasi-likelihood) approach based on weighting the sample estimating equations by the survey weights.
引用
收藏
页码:179 / 197
页数:18
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