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Regression Discontinuity Designs With Sample Selection
Authors:Yingying Dong
Institution:Department of Economics, 3151 Social Science Plaza, University of California Irvine, Irvine, CA 92697-5100 (yyd@uci.edu, ?http://yingyingdong.com/)
Abstract:This article extends the standard regression discontinuity (RD) design to allow for sample selection or missing outcomes. We deal with both treatment endogeneity and sample selection. Identification in this article does not require any exclusion restrictions in the selection equation, nor does it require specifying any selection mechanism. The results can therefore be applied broadly, regardless of how sample selection is incurred. Identification instead relies on smoothness conditions. Smoothness conditions are empirically plausible, have readily testable implications, and are typically assumed even in the standard RD design. We first provide identification of the “extensive margin” and “intensive margin” effects. Then based on these identification results and principle stratification, sharp bounds are constructed for the treatment effects among the group of individuals that may be of particular policy interest, that is, those always participating compliers. These results are applied to evaluate the impacts of academic probation on college completion and final GPAs. Our analysis reveals striking gender differences at the extensive versus the intensive margin in response to this negative signal on performance.
Keywords:Extensive margin  Fuzzy design  Gender differences  Intensive margin  Missing outcomes  Performance standard  Regression discontinuity  Sample selection
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