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Trimming for Bounds on Treatment Effects with Missing OutcomesDavid LeeUniversity of California, Berkeley - Department of Economics; National Bureau of Economic Research (NBER) June 2002 NBER Working Paper No. t0277 Abstract: Empirical researchers routinely encounter sample selection bias whereby 1) the regressor of interest is assumed to be exogenous, 2) the dependent variable is missing in a potentially non-random manner, 3) the dependent variable is characterized by an unbounded (or very large) support, and 4) it is unknown which variables directly affect sample selection but not the outcome. This paper proposes a simple and intuitive bounding procedure that can be used in this context. The proposed trimming procedure yields the tightest bounds on average treatment effects consistent with the observed data. The key assumption is a monotonicity restriction on how the assignment to treatment effects selection -- a restriction that is implicitly assumed in standard formulations of the sample selection problem.
Number of Pages in PDF File: 21 working papers seriesDate posted: June 24, 2002Suggested CitationContact Information
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