Falsification of Internal and External Validity in Observational Studies via Conditional Moment Restrictions

Abstract

Randomized Controlled Trials (RCT)s are relied upon to assess new treatments, but suffer from limited power to guide personalized treatment decisions. On the other hand, observational (i.e., non-experimental) studies have large and diverse populations, but are prone to various biases (e.g. residual confounding). To safely leverage the strengths of observational studies, we focus on the problem of falsification, whereby RCTs are used to validate causal effect estimates learned from observational data. In particular, we show that, given data from both an RCT and an observational study, assumptions on internal and external validity have an observable, testable implication in the form of a set of Conditional Moment Restrictions (CMRs). Further, we show that expressing these CMRs with respect to the causal effect, or causal contrast, as opposed to individual counterfactual means, provides a more reliable falsification test. In addition to giving guarantees on the asymptotic properties of our test, we demonstrate superior power and type I error of our approach on semi-synthetic and real world datasets. Our approach is interpretable, allowing a practitioner to visualize which subgroups in the population lead to falsification of an observational study.

Publication
Proceedings of International Conference on Artificial Intelligence and Statistics (AISTATS)
Zeshan Hussain
Zeshan Hussain
MD/PhD Student

Harvard/MIT MD/PhD

Ming-Chieh Shih
Ming-Chieh Shih
Postdoctoral Fellow

Assistant Professor

Michael Oberst
Michael Oberst
PhD Student

Postdoc CMU, Incoming Asst Prof Johns Hopkins

Ilker Demirel
Ilker Demirel
PhD Student

Ilker focuses on developing reliable causal inference methods that can leverage rich and heterogeneous sources of data and can be applied in practice.

David Sontag
David Sontag
Professor of EECS

My research focuses on advancing machine learning and artificial intelligence, and using these to transform health care.

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