Combining Double Sampling and Bounds to Address Nonignorable Missing Outcomes in Randomized Experiments
Alexander Coppock,
Alan S. Gerber,
Donald P. Green and
Holger L. Kern
Political Analysis, 2017, vol. 25, issue 2, 188-206
Abstract:
Missing outcome data plague many randomized experiments. Common solutions rely on ignorability assumptions that may not be credible in all applications. We propose a method for confronting missing outcome data that makes fairly weak assumptions but can still yield informative bounds on the average treatment effect. Our approach is based on a combination of the double sampling design and nonparametric worst-case bounds. We derive a worst-case bounds estimator under double sampling and provide analytic expressions for variance estimators and confidence intervals. We also propose a method for covariate adjustment using poststratification and a sensitivity analysis for nonignorable missingness. Finally, we illustrate the utility of our approach using Monte Carlo simulations and a placebo-controlled randomized field experiment on the effects of persuasion on social attitudes with survey-based outcome measures.
Date: 2017
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Persistent link: https://EconPapers.repec.org/RePEc:cup:polals:v:25:y:2017:i:02:p:188-206_00
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