We consider the estimation of average treatment effects in observational studies and propose a new framework of robust causal inference with unobserved confounders. Our approach is based on distributionally robust optimization and proceeds in two steps. We first specify the maximal degree to which the distribution of unobserved potential outcomes may deviate from that of observed outcomes. We then derive sharp bounds on the average treatment effects under this assumption. Our framework encompasses the popular marginal sensitivity model as a special case, and we demonstrate how the proposed methodology can address a primary challenge of the marginal sensitivity model that it produces uninformative results when unobserved confounders substantially affect treatment and outcome. Specifically, we develop an alternative sensitivity model, called the distributional sensitivity model, under the assumption that heterogeneity of treatment effect due to unobserved variables is relatively small. Unlike the marginal sensitivity model, the distributional sensitivity model allows for potential lack of overlap and often produces informative bounds even when unobserved variables substantially affect both treatment and outcome. Finally, we show how to extend the distributional sensitivity model to difference-in-differences designs and settings with instrumental variables. Through simulation and empirical studies, we demonstrate the applicability of the proposed methodology.
翻译:在观察研究中,我们考虑对平均治疗效果的估计,并提议与未观察到的困惑者一道,提出一个强有力的因果关系推断新框架。我们的方法以分布稳健的优化为基础,分两个步骤进行。我们首先说明未观察到的潜在结果的分配可能偏离观察到的结果的最大程度。然后我们根据这一假设,从平均治疗效果中得出鲜明的界限。我们的框架作为一个特例将流行的边际敏感模型作为一个特例包含在内,我们证明拟议方法如何能够解决边际敏感模型的主要挑战,即当未观察到的混淆者严重影响治疗和结果时,它会产生不知情的结果。具体地说,我们开发了一个称为分配敏感模型的替代模型,其假设是,由于未观察到的变量造成的治疗效果的异质性相对较小。与边际敏感模型不同的是,分配敏感模型允许潜在缺乏重叠,而且即使在未观察到的变量对治疗和结果产生重大影响时,也往往产生信息性界限。最后,我们展示了如何将分配敏感性模型扩大到具有工具变量的差别设计和环境。我们通过模拟和实证方法展示了拟议的应用性方法。