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Wednesday, June 16
Wed, Jun 16, 1:30 PM - 3:30 PM
TBD
Advanced Imputation Techniques for Handling Missing Data

Bayesian Jackknife Empirical Likelihood Based Inference for Missing Data and Causal Inference Problems (309743)

*Yichuan Zhao, Georgia State University 
Sixia Chen, University of Oklahoma Health Sciences Center 
Yuke Wang, Emory University 

Keywords: missing data, Bayesian jackknife EL, statistical inference, causal inference

Missing data is very common in variety of fields including survey sampling, economics, social science, and medical researches. Missing data reduces the representativeness of the sample and could potentially lead to inference problems. Empirical likelihood method does not require any distributional assumptions. It is a powerful tool of statistical inference for data with missing values. In this talk, we applied the Bayesian jackknife empirical likelihood method, proposed by Cheng and Zhao (2019), for inference with missing data and causal inference. The propensity score weighted estimator, doubly robust estimator, and semiparametric fractional imputation estimator, proposed by Chen and Kim (2017), were used for inference with missing data. Some existing methods were compared with the Bayesian jackknife empirical likelihood approach in a simulation study and the proposed approach shows better performance in many scenarios. And a casual inference example with real data was used to illustrate the proposed approach.