Using propensity scores in difference-in-differences models to estimate the effects of a policy change

Elizabeth A. Stuart1, Haiden A. Huskamp2, Kenneth Duckworth3, Jeffrey B. Simmons3, Zirui Song2, Michael E. Chernew2, Colleen L. Barry1
1Johns Hopkins Bloomberg School of Public Health, Baltimore, USA
2Harvard Medical School, Boston, USA;
3Blue Cross Blue Shield of Massachusetts, Boston, USA

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