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ABSTRACT

Understanding and characterizing treatment effect variation in randomized experiments has become essential for going beyond the “black box” of the average treatment effect. Nonetheless, traditional statistical approaches often ignore or assume away such variation. In the context of randomized experiments, this article proposes a framework for decomposing overall treatment effect variation into a systematic component explained by observed covariates and a remaining idiosyncratic component. Our framework is fully randomization-based, with estimates of treatment effect variation that are entirely justified by the randomization itself. Our framework can also account for noncompliance, which is an important practical complication. We make several contributions. First, we show that randomization-based estimates of systematic variation are very similar in form to estimates from fully interacted linear regression and two-stage least squares. Second, we use these estimators to develop an omnibus test for systematic treatment effect variation, both with and without noncompliance. Third, we propose an R2-like measure of treatment effect variation explained by covariates and, when applicable, noncompliance. Finally, we assess these methods via simulation studies and apply them to the Head Start Impact Study, a large-scale randomized experiment. Supplementary materials for this article are available online.

Acknowledgments

The authors thank Alberto Abadie, Donald Rubin, participants at the Applied Statistics Seminar at the Harvard Institute of Quantitative Social Science, and colleagues at University of California, Berkeley and Harvard University for helpful comments. The authors also thank their reviewers who helped them sharpen their mathematical presentations, in particular the asymptotic arguments.

Additional information

Funding

The authors gratefully acknowledge financial support from the Spencer Foundation through a grant entitled “Using Emerging Methods with Existing Data from Multi-site Trials to Learn About and From Variation in Educational Program Effects,” and from the Institute for Education Science (IES Grant #R305D150040). Peng Ding also gratefully acknowledges financial support from the National Science Foundation (DMS grant #1713152).

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