Debiased Bayesian inference for average treatment effects
Abstract
Bayesian approaches have become increasingly popular in causal inference problems due to their conceptual simplicity, excellent performance and in-built uncertainty quantification ('posterior credible sets'). We investigate Bayesian inference for average treatment effects from observational data, which is a challenging problem due to the missing counterfactuals and selection bias. Working in the standard potential outcomes framework, we propose a data-driven modification to an arbitrary (nonparametric) prior based on the propensity score that corrects for the first-order posterior bias, thereby improving performance. We illustrate our method for Gaussian process (GP) priors using (semi-)synthetic data. Our experiments demonstrate significant improvement in both estimation accuracy and uncertainty quantification compared to the unmodified GP, rendering our approach highly competitive with the state-of-the-art.
Cite
@article{arxiv.1909.12078,
title = {Debiased Bayesian inference for average treatment effects},
author = {Kolyan Ray and Botond Szabo},
journal= {arXiv preprint arXiv:1909.12078},
year = {2019}
}
Comments
NeurIPS 2019