Replicating Experimental Impact Estimates with Nonexperimental Methods in the Context of Control Crossover
Brian Gill,
Joshua Furgeson,
Hanley S. Chiang,
Bing-Ru Teh,
Joshua Haimson and
Natalya Verbitsky-Savitz
Mathematica Policy Research Reports from Mathematica Policy Research
Abstract:
Ideally, nonexperimental methods that aim to replicate the results of rigorous randomized experiments focus on the intent to treat (ITT) experimental impact estimate, the most causally rigorous measure.
Keywords: Replicating; Experimental Impact Estimates; Education; Nonexperimental Methods; Control Crossover; Working Paper 21 (search for similar items in EconPapers)
Pages: 24
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