A Bayesian Approach for Achieving Double Robustness in Treatment Effect Estimation

Abstract Number:

2973 

Submission Type:

Contributed Abstract 

Contributed Abstract Type:

Paper 

Participants:

Biqing Yang (1), Xinyi Xu (1)

Institutions:

(1) Ohio State University, Columbus, OH

Co-Author:

Xinyi Xu  
Ohio State University

First Author:

Biqing Yang  
Ohio State University

Presenting Author:

Biqing Yang  
N/A

Abstract Text:

Combining propensity and prognostic scores enhances the efficiency of matching methods in estimating average treatment effect in observational studies. This paper aims to provide a Bayesian approach of double score estimation as well as a theoretical support of the consistency of the Bayesian estimator. Specifically, we explore the performance of a semiparametric Bayesian model, utilizing Gaussian process priors and addressing potential model mis-specification. We derive asymptotic results to validate the consistency of Bayesian estimators as the sample size increases. Particularly noteworthy is the demonstrated superiority of double-score Bayesian estimators in estimating both the population and conditional average treatment effects. In the simulation study, we analyze the performance of these models under various scenarios with a finite sample size. The results generated by the MCMC algorithm indicate doubly robust estimation under specific conditions. We also apply our proposed single/double score model to a real-world dataset, yielding results that align with existing studies utilizing matching methods.

Keywords:

Bayesian Semiparametric|Gaussian Process|Propensity and Prognostic Scores Matching|Bayesian Casual Inference|Markov chain Monte Carlo|Heterogeneous Treatment Effect Estimation

Sponsors:

Section on Statistics in Epidemiology

Tracks:

Causal Inference

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