Extrapolating Single-Treatment Effects Out of Factorial Experiments
Guilherme Duarte

TL;DR
This paper demonstrates that extrapolating single-treatment effects from factorial experiments is generally not identifiable without strong assumptions, and provides conditions and bounds for when such extrapolations are justified.
Contribution
It formalizes conditions for identifying single-treatment effects in factorial experiments and introduces nonparametric bounds for effect extrapolation.
Findings
Single-treatment effects are not identifiable without assumptions.
Linear models or causal graphs are necessary for identification.
Nonparametric bounds can inform effect sign extrapolation.
Abstract
Despite their cost, randomized controlled trials (RCTs) are widely regarded as gold-standard evidence in disciplines ranging from social science to medicine. In recent decades, researchers have increasingly sought to reduce the resource burden of repeated RCTs with factorial designs that simultaneously test multiple hypotheses, e.g. experiments that evaluate the effects of many medications or products simultaneously. Here I show that when multiple interventions are randomized in experiments, the effect any single intervention would have outside the experimental setting is not identified absent heroic assumptions, even if otherwise perfectly realistic conditions are achieved. This happens because single-treatment effects involve a counterfactual world with a single focal intervention, allowing other variables to take their natural values (which may be confounded or modified by the focal…
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Taxonomy
TopicsOptimal Experimental Design Methods
