论文标题

近端因果学习简介

An Introduction to Proximal Causal Learning

论文作者

Tchetgen, Eric J Tchetgen, Ying, Andrew, Cui, Yifan, Shi, Xu, Miao, Wang

论文摘要

观察数据的因果推断的标准假设是,人们已经测量了一组足够丰富的协变量,以确保在协变量层中,受试者在观察到的治疗值之间可交换。通常需要对观察性研究中对交换性假设的怀疑,因为它取决于研究人员准确测量协变量捕获所有潜在混杂来源的能力。实际上,如果有的话,混淆的机制很少可以从测量的协变量中肯定地学习。因此,人们只能希望协变量测量最多是在观察性研究中运行的真正基本混杂机制的代理,从而使基于标准交换性条件提出的因果关系无效。来自代理的因果学习是一个具有挑战性的反问题,迄今为止尚未解决。在本文中,我们介绍了一个正式的因果关系学习的正式潜在结果框架,尽管该框架明确承认将协变量测量视为混杂机制的不完善的代理,但提供了一个机会,可以在设置中学习因测量值协方差的贸易联盟效应的机会。给出了足够的非参数鉴定条件,导致近端G形成率和相应的G近端G-Compuntion算法进行估计。这些可能被视为Robins基础G形式和G-Compuntion算法的概括,这些算法明确地说明了由于无法衡量的混杂而造成的偏见。均考虑了点治疗和时变治疗环境,并应用了因果效应的近端G型的应用以进行例证。

A standard assumption for causal inference from observational data is that one has measured a sufficiently rich set of covariates to ensure that within covariate strata, subjects are exchangeable across observed treatment values. Skepticism about the exchangeability assumption in observational studies is often warranted because it hinges on investigators' ability to accurately measure covariates capturing all potential sources of confounding. Realistically, confounding mechanisms can rarely if ever, be learned with certainty from measured covariates. One can therefore only ever hope that covariate measurements are at best proxies of true underlying confounding mechanisms operating in an observational study, thus invalidating causal claims made on basis of standard exchangeability conditions. Causal learning from proxies is a challenging inverse problem which has to date remained unresolved. In this paper, we introduce a formal potential outcome framework for proximal causal learning, which while explicitly acknowledging covariate measurements as imperfect proxies of confounding mechanisms, offers an opportunity to learn about causal effects in settings where exchangeability on the basis of measured covariates fails. Sufficient conditions for nonparametric identification are given, leading to the proximal g-formula and corresponding proximal g-computation algorithm for estimation. These may be viewed as generalizations of Robins' foundational g-formula and g-computation algorithm, which account explicitly for bias due to unmeasured confounding. Both point treatment and time-varying treatment settings are considered, and an application of proximal g-computation of causal effects is given for illustration.

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