模糊断点回归设计中的弱识别问题

Weak Identification in Fuzzy Regression Discontinuity Designs

Journal of Business & Economic Statistics · 2015
被引 67
人大 AABS 4

中文导读

发现模糊断点回归设计中,当断点处处理概率变化很小时,传统t检验会出现规模扭曲,并提出了修正的t统计量来消除这一问题。

Abstract

In fuzzy regression discontinuity (FRD) designs, the treatment effect is identified through a discontinuity in the conditional probability of treatment assignment. We show that when identification is weak (i.e., when the discontinuity is of a small magnitude), the usual t -test based on the FRD estimator and its standard error suffers from asymptotic size distortions as in a standard instrumental variables setting. This problem can be especially severe in the FRD setting since only observations close to the discontinuity are useful for estimating the treatment effect. To eliminate those size distortions, we propose a modified t -statistic that uses a null-restricted version of the standard error of the FRD estimator. Simple and asymptotically valid confidence sets for the treatment effect can be also constructed using this null-restricted standard error. An extension to testing for constancy of the regression discontinuity effect across covariates is also discussed. Supplementary materials for this article are available online.

弱识别模糊断点回归t统计量修正置信区间