Balancing Covariates in Randomized Experiments with the Gram-Schmidt Walk Design
November 08, 2019 Β· Declared Dead Β· π Journal of the American Statistical Association
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Authors
Christopher Harshaw, Fredrik SΓ€vje, Daniel Spielman, Peng Zhang
arXiv ID
1911.03071
Category
stat.ME
Cross-listed
cs.DS,
math.ST
Citations
53
Venue
Journal of the American Statistical Association
Last Checked
2 months ago
Abstract
The design of experiments involves a compromise between covariate balance and robustness. This paper provides a formalization of this trade-off and describes an experimental design that allows experimenters to navigate it. The design is specified by a robustness parameter that bounds the worst-case mean squared error of an estimator of the average treatment effect. Subject to the experimenter's desired level of robustness, the design aims to simultaneously balance all linear functions of potentially many covariates. Less robustness allows for more balance. We show that the mean squared error of the estimator is bounded in finite samples by the minimum of the loss function of an implicit ridge regression of the potential outcomes on the covariates. Asymptotically, the design perfectly balances all linear functions of a growing number of covariates with a diminishing reduction in robustness, effectively allowing experimenters to escape the compromise between balance and robustness in large samples. Finally, we describe conditions that ensure asymptotic normality and provide a conservative variance estimator, which facilitate the construction of asymptotically valid confidence intervals.
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