Proximal causal inference was recently proposed as a framework to identify causal effects from observational data in the presence of hidden confounders for which proxies are available. In this paper, we extend the proximal causal inference approach to settings where identification of causal effects hinges upon a set of mediators which are not observed, yet error prone proxies of the hidden mediators are measured. Specifically, (i) We establish causal hidden mediation analysis, which extends classical causal mediation analysis methods for identifying natural direct and indirect effects under no unmeasured confounding to a setting where the mediator of interest is hidden, but proxies of it are available. (ii) We establish hidden front-door criterion, which extends the classical front-door criterion to allow for hidden mediators for which proxies are available. (iii) We show that the identification of a certain causal effect called population intervention indirect effect remains possible with hidden mediators in settings where challenges in (i) and (ii) might co-exist. We view (i)-(iii) as important steps towards the practical application of front-door criteria and mediation analysis as mediators are almost always measured with error and thus, the most one can hope for in practice is that the measurements are at best proxies of mediating mechanisms. We propose identification approaches for the parameters of interest in our considered models. For the estimation aspect, we propose an influence function-based estimation method and provide an analysis for the robustness of the estimators.
翻译:最近提出了一个框架,以确定在有代理人的隐蔽混淆者在场的情况下观察数据的因果关系。在本文件中,我们将初步因果关系推断方法推广到一些环境,在这些环境中,因果关系的确定取决于一组未观察到的调解人,而隐蔽调解人的偏差则得到测量。具体地说,(一) 我们建立了因果隐蔽调解分析,将典型的因果调解分析方法推广到一个环境,在这种环境中,人们可以隐藏感兴趣的调解人,但却有其代理人。 (二) 我们制定了隐蔽的门前标准,将传统的门前标准扩展至隐蔽调解人的隐蔽因果关系判断标准。 (三) 我们表明,在存在(一) 和(二) 挑战可能同时存在的环境中,人们仍然有可能发现某种所谓的人口干预间接效应。 我们认为,(一)-(三) 是朝着实际应用前门标准和调解分析作为调解人的近乎易懂的环境迈出的重要一步。 (二) 我们提出的隐隐隐隐隐隐隐隐隐隐隐隐隐隐隐隐隐隐隐隐隐隐隐隐的调解分析,因此,我们提出的衡量方法可以提出一种对媒体的希望的分析。