10月30日 | 王中雷:Multiple bias-calibration for adjusting selection bias of non-probability samples using data integration

时   间:2023年10月30日 10:45-11:45

地   点:  普陀校区理科大楼A1514

报告人:王中雷 副教授 厦门大学

主持人:项冬冬 教授

摘   要:

Valid statistical inference is challenging when the sample is subject to unknown selection bias. Data integration can be used to correct for selection bias when we have a parallel probability sample from the same population with some common measurements. How to model and estimate the selection probability or the propensity score (PS) of a non-probability sample using an independent probability sample is the challenging part of the data integration. We approach this difficult problem by employing multiple candidate models for PS combined with empirical likelihood. By incorporating multiple propensity score models into the internal bias calibration constraint in the empirical likelihood setup, the selection bias can be eliminated so long as the multiple candidate models contain a true PS model. The bias calibration constraint under the multiple PS models is called multiple bias calibration. Multiple PS models can include both missing-at-random and missing-not-at-random models. Asymptotic properties are discussed, and some limited simulation studies are presented to compare the proposed method with some existing competitors. Plasmode simulation studies using the Culture \& Community in a Time of Crisis dataset demonstrate the practical usage and advantages of the proposed method.

报告人简介:

王中雷为厦门大学王亚南经济研究院副教授,其研究方向包括抽样调查。主持国家自然科学基金1项,主要成果发表在JRSS-B、JASA等期刊。


发布者:张瑛发布时间:2023-10-27浏览次数:68