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A Bayesian nonparametric causal model
Authors:George Karabatsos  Stephen G Walker
Institution:a University of Illinois-Chicago, 1040 W. Harrison St. (MC 147), Chicago, IL 60607, United States
b University of Kent, United Kingdom
Abstract:Typically, in the practice of causal inference from observational studies, a parametric model is assumed for the joint population density of potential outcomes and treatment assignments, and possibly this is accompanied by the assumption of no hidden bias. However, both assumptions are questionable for real data, the accuracy of causal inference is compromised when the data violates either assumption, and the parametric assumption precludes capturing a more general range of density shapes (e.g., heavier tail behavior and possible multi-modalities). We introduce a flexible, Bayesian nonparametric causal model to provide more accurate causal inferences. The model makes use of a stick-breaking prior, which has the flexibility to capture any multi-modalities, skewness and heavier tail behavior in this joint population density, while accounting for hidden bias. We prove the asymptotic consistency of the posterior distribution of the model, and illustrate our causal model through the analysis of small and large observational data sets.
Keywords:Bayesian nonparametrics  Causal inference  Observational studies
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