Unobserved confounding is a fundamental obstacle to establishing valid causal conclusions from observational data. Two complementary types of approaches have been developed to address this obstacle. An extensive line of work is based on taking advantage of fortuitous external aids (such as the presence of an instrumental variable or other proxy), along with additional assumptions to ensure identification. A recent line of work of proximal causal inference (Miao et al., 2018a) has aimed to provide a novel approach to using proxies to deal with unobserved confounding without relying on stringent parametric assumptions. On the other hand, a complete characterization of identifiability of a large class of causal parameters in arbitrary causal models with hidden variables has been developed using the language of graphical models, resulting in the ID algorithm and related extensions (Tian and Pearl, 2002; Shpitser and Pearl, 2006a,b). Celebrated special cases of this approach, such as the front-door model, are able to obtain non-parametric identification in seemingly counter-intuitive situations when a treatment and an outcome share an arbitrarily complicated unobserved common cause. In this paper we aim to develop a synthesis of the proximal and graphical approaches to identification in causal inference to yield the most general identification algorithm in multi- variate systems currently known - the proximal ID algorithm. In addition to being able to obtain non-parametric identification in all cases where the ID algorithm succeeds, our approach allows us to systematically exploit proxies to adjust for the presence of unobserved confounders that would have otherwise prevented identification. In addition, we outline a class of estimation strategies for causal parameters identified by our method in an important special case. We illustration our approach by simulation studies.
翻译:在从观察数据中得出有效的因果结论方面,出现了一个根本障碍,即没有看到从观察数据中得出有效的因果结论。为克服这一障碍,已经制定了两种相辅相成的方法。广泛的工作方针是以利用偶然的外部辅助手段(例如存在工具变量或其他替代工具)为基础,并辅之以确保识别的额外假设。最近进行的一系列准因果推断工作(Maao等人,2018aa)旨在提供一种新颖的方法,用代理人处理未观察到的因果结论,而不依赖严格的参数假设。另一方面,对任意的因果模型中含有隐藏变量的大量因果参数的可识别性作了完全的描述。使用图形模型的语言(例如存在一个工具变量或其他替代工具),并以此为基础,同时进行额外的假设。最近进行的一系列关于准因果推理推理推理推理推理推理推理推理推理推理的工作(Miao,2002年;Shipts和Pearter,2006年a,b),旨在提供一种值得称赞的特殊案例,例如前门模型,以便能够在看得非理性推理推理推理推理推理的根据的推理推理推理推理推理推理推理推理推理推理推理推理推理推理推理推理推理推理推理推理的推理推理推理推理推理推理推理推理推理推理推理推理推理推理推理推理推理推理推理推理推理推理推理推理推理推理推理推理推理推理推理推理推理推理推理推理推理推理推理推理推理推理推理推理推理法。