Semiparametric empirical likelihood estimation for two-stage outcome-dependent sampling under the frame of generalized linear models

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作者
Jie-li Ding
Yan-yan Liu
机构
[1] Wuhan University,School of Mathematics and Statistics
关键词
biased-sampling; two-stage design; empirical likelihood; generalized linear models; large-sample properties; 62J12;
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摘要
Epidemiologic studies use outcome-dependent sampling (ODS) schemes where, in addition to a simple random sample, there are also a number of supplement samples that are collected based on outcome variable. ODS scheme is a cost-effective way to improve study efficiency. We develop a maximum semiparametric empirical likelihood estimation (MSELE) for data from a two-stage ODS scheme under the assumption that given covariate, the outcome follows a general linear model. The information of both validation samples and nonvalidation samples are used. What is more, we prove the asymptotic properties of the proposed MSELE.
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页码:663 / 676
页数:13
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