Affiliation:
1. Department of Biostatistics and Epidemiology University of Oklahoma Health Sciences Center Oklahoma City OK 73104 USA
2. Hubert Department of Global Health Emory University Atlanta GA 30322 USA
3. Department of Mathematics and Statistics Georgia State University Atlanta GA 30303 USA
Abstract
AbstractMissing data reduce the representativeness of the sample and can lead to inference problems. In this article, we apply the Bayesian jackknife empirical likelihood (BJEL) method for inference on data that are missing at random, as well as for causal inference. The semiparametric fractional imputation estimator, propensity score‐weighted estimator, and doubly robust estimator are used for constructing the jackknife pseudo values, which are needed for conducting BJEL‐based inference with missing data. Existing methods, such as normal approximation and JEL, are compared with the BJEL approach in a simulation study. The proposed approach shows better performance in many scenarios in terms of credible intervals. Furthermore, we demonstrate the application of the proposed approach for causal inference problems in a study of risk factors for impaired kidney function.
Funder
National Security Agency
National Institute of General Medical Sciences
National Institute on Minority Health and Health Disparities
Simons Foundation
National Science Foundation