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Causal Inference Under Mis-Specification: Adjustment Based on the Propensity Score (with Discussion)

David A. Stephens, Widemberg S. Nobre, Erica E. M. Moodie, Alexandra M. Schmidt

2022Bayesian Analysis13 citationsDOIOpen Access PDF

Abstract

We study Bayesian approaches to causal inference via propensity score regression. Much of Bayesian methodology relies on parametric and distributional assumptions, with presumed correct specification, whereas the extant propensity score methods in Bayesian literature have relied on approaches that cannot be viewed as fully Bayesian in the context of conventional ‘likelihood times prior’ posterior inference. We emphasize that causal inference is typically carried out in settings of mis-specification, and develop strategies for fully Bayesian inference that reflect this. We focus on methods based on decision-theoretic arguments, and show how inference based on loss-minimization can give valid and fully Bayesian inference. We propose a computational approach to inference based on the Bayesian bootstrap which has good Bayesian and frequentist properties.

Topics & Concepts

Frequentist inferenceInferenceBayesian inferenceBayesian probabilityComputer scienceCausal inferenceBayesian statisticsPropensity score matchingFiducial inferenceMachine learningBayesian linear regressionArtificial intelligenceEconometricsMathematicsStatisticsAdvanced Causal Inference TechniquesStatistical Methods and InferenceStatistical Methods and Bayesian Inference