Optimized Regression Discontinuity Designs

成果类型:
Article
署名作者:
Imbens, Guido; Wager, Stefan
署名单位:
Stanford University
刊物名称:
REVIEW OF ECONOMICS AND STATISTICS
ISSN/ISSBN:
0034-6535
DOI:
10.1162/rest_a_00793
发表日期:
2019-05
页码:
264-278
关键词:
nonparametric-estimation confidence-intervals linear-estimation inference average identification manipulation assignment ELECTIONS education
摘要:
The increasing popularity of regression discontinuity methods for causal inference in observational studies has led to a proliferation of different estimating strategies, most of which involve first fitting nonparametric regression models on both sides of a treatment assignment boundary and then reporting plug-in estimates for the effect of interest. In applications, however, it is often difficult to tune the nonparametric regressions in a way that is well calibrated for the specific target of inference; for example, the model with the best global in-sample fit may provide poor estimates of the discontinuity parameter, which depends on the regression function at boundary points. We propose an alternative method for estimation and statistical inference in regression discontinuity designs that uses numerical convex optimization to directly obtain the finite-sample-minimax linear estimator for the regression discontinuity parameter, subject to bounds on the second derivative of the conditional response function. Given a bound on the second derivative, our proposed method is fully data driven and provides uniform confidence intervals for the regression discontinuity parameter with both discrete and continuous running variables. The method also naturally extends to the case of multiple running variables.
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