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arxiv: 2011.04826 · v1 · pith:XJ2QXGX6new · submitted 2020-11-09 · 📊 stat.ME · econ.EM

Reducing bias in difference-in-differences models using entropy balancing

classification 📊 stat.ME econ.EM
keywords trendsdifference-in-differencespre-interventionbalancingentropyoutcomeparallelwhen
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This paper illustrates the use of entropy balancing in difference-in-differences analyses when pre-intervention outcome trends suggest a possible violation of the parallel trends assumption. We describe a set of assumptions under which weighting to balance intervention and comparison groups on pre-intervention outcome trends leads to consistent difference-in-differences estimates even when pre-intervention outcome trends are not parallel. Simulated results verify that entropy balancing of pre-intervention outcomes trends can remove bias when the parallel trends assumption is not directly satisfied, and thus may enable researchers to use difference-in-differences designs in a wider range of observational settings than previously acknowledged.

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