Population empirical likelihood estimation in dual frame surveys

被引:0
|
作者
Maria del Mar Rueda
Maria Giovanna Ranalli
Antonio Arcos
David Molina
机构
[1] University of Granada,Department of Statistics and O. R.
[2] University of Perugia,Department of Political Sciences
[3] University of Granada,Department of Didactics of Mathematics
来源
Statistical Papers | 2021年 / 62卷
关键词
Multiplicity; Auxiliary information; Multiple frame surveys; Finite population inference; 62D05;
D O I
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中图分类号
学科分类号
摘要
Dual frame surveys are a device to reduce the costs derived from data collection in surveys and improve coverage for the whole target population. Since their introduction, in the 1960‘s, dual frame surveys have gained much attention and several estimators have been formulated based on a number of different approaches. In this work, we propose new dual frame estimators based on the population empirical likelihood method originally proposed by Chen and Kim (Stat Sin 24:335–355, 2014) and using both the dual and the single frame approach. The extension of the proposed methodology to more than two frame surveys is also sketched. The performance of the proposed estimators in terms of relative bias and relative mean squared error is tested through simulation experiments. These experiments indicate that the proposed estimators yield better results than other likelihood-based estimators proposed in the literature.
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页码:2473 / 2490
页数:17
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