How much should we trust staggered difference-in-differences estimates?
Andrew C. Baker, David F. Larcker, Charles C. Y. Wang
Abstract
We explain when and how staggered difference-in-differences regression estimators, commonly applied to assess the impact of policy changes, are biased. These biases are likely to be relevant for a large portion of research settings in finance, accounting, and law that rely on staggered treatment timing, and can result in Type-I and Type-II errors. We summarize three alternative estimators developed in the econometrics and applied literature for addressing these biases, including their differences and tradeoffs. We apply these estimators to re-examine prior published results and show, in many cases, the alternative causal estimates or inferences differ substantially from prior papers.
Topics & Concepts
EstimatorEconometricsCausal inferenceEconomicsDifference in differencesRegressionStatisticsMathematicsAdvanced Causal Inference TechniquesHealthcare Policy and ManagementGender, Labor, and Family Dynamics