An Introduction to Proximal Causal Learning
Eric J Tchetgen Tchetgen, Andrew Ying, Yifan Cui, Xu Shi, Wang Miao

TL;DR
This paper introduces a new framework for causal inference using proxies for unmeasured confounders, enabling causal effect estimation even when standard assumptions of exchangeability are violated.
Contribution
It develops a formal potential outcome framework and provides conditions for nonparametric identification, generalizing Robins' g-formula to account for unmeasured confounding.
Findings
Proximal g-formula enables causal effect estimation with proxy measurements.
Conditions for nonparametric identification are established.
Illustrative application demonstrates practical utility.
Abstract
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…
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Taxonomy
TopicsAdvanced Causal Inference Techniques · Statistical Methods and Inference · Statistical Methods and Bayesian Inference
