Synthetic Difference in Differences

12/24/2018
by   Dmitry Arkhangelsky, et al.
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We present a new perspective on the Synthetic Control (SC) method as a weighted regression estimator with time fixed effects. This perspective suggests a generalization with two way (both unit and time) fixed effects, which can be interpreted as a weighted version of the standard Difference In Differences (DID) estimator. We refer to this new estimator as the Synthetic Difference In Differences (SDID) estimator. We validate our approach formally, in simulations, and in an application, finding that this new SDID estimator has attractive properties compared to the SC and DID estimators. In particular, we find that our approach has doubly robust properties: the SDID estimator is consistent under a wide variety of weighting schemes given a well-specified fixed effects model, and SDID is consistent with appropriately penalized SC weights when the basic fixed effects model is misspecified and instead the true data generating process involves a more general low-rank structure (e.g., a latent factor model). We also present results that justify standard inference based on weighted DID regression.

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