This paper provides a critical review of the Bayesian perspective of causal inference based on the potential outcomes framework. We review the causal estimands, identification assumptions, the general structure of Bayesian inference of causal effects, and sensitivity analysis. We highlight issues that are unique to Bayesian causal inference, including the role of the propensity score, definition of identifiability, the choice of priors in both low and high dimensional regimes. We point out the central role of covariate overlap and more generally the design stage in Bayesian causal inference. We extend the discussion to two complex assignment mechanisms: instrumental variable and time-varying treatments. Throughout, we illustrate the key concepts via examples.
翻译:本文件根据潜在成果框架对巴伊西亚因果推断观点进行了严格审查。我们审查了因果估计、识别假设、巴伊西亚因果推断的总体结构以及敏感性分析。我们强调了巴伊西亚因果推断所特有的问题,包括倾向性评分的作用、可识别性的定义、在低度和高度制度中前科的选择。我们指出了共变重叠的核心作用,以及巴伊西亚因果推断的设计阶段。我们把讨论扩大到两个复杂的分配机制:工具变量和时间分配处理。我们从总体上通过实例来说明关键概念。