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Approximate Permutation Tests and Induced Order Statistics in the Regression Discontinuity Design

机译:回归不连续设计中的近似排列测试和诱导顺序统计

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摘要

In the regression discontinuity design, it is common practice to asses the credibility of the design by testing whether the means of baseline covariates do not change at the cutoff (or threshold) of the running variable. This practice is partly motivated by the stronger implication derived by Lee (2008), who showed that under certain conditions the distribution of baseline covariates in the RDD must be continuous at the cutoff. We propose a permutation test based on the so-called induced ordered statistics for the null hypothesis of continuity of the distribution of baseline covariates at the cutoff; and introduce a novel asymptotic framework to analyze its properties. The asymptotic framework is intended to approximate a small sample phenomenon: even though the total number n of observations may be large, the number of effective observations local to the cutoff is often small. Thus, while traditional asymptotics in RDD require a growing number of observations local to the cutoff as u2192 u221e , our framework keeps the number q of observations local to the cutoff fixed as nu2192 u221e. The new test is easy to implement, asymptotically valid under weak conditions, exhibits finite sample validity under stronger conditions than those needed for its asymptotic validity, and has favorable power properties relative to tests based on means. In a simulation study, we find that the new test controls size remarkably well across designs. We then use our test to evaluate the validity of the design in Lee (2008), a well-known application of the RDD to study incumbency advantage.
机译:在回归不连续性设计中,通常的做法是通过测试基线协变量的均值在运行变量的临界值(或阈值)处是否不变来评估设计的可信度。这种做法部分是由Lee(2008)得出的更强的含意所推动的,Lee(2008)指出,在某些条件下,RDD中基线协变量的分布必须在临界点处连续。我们提出了基于所谓诱导有序统计量的置换检验,用于对截止时基线协变量分布连续性的零假设进行假说。并介绍了一种新颖的渐近框架来分析其性质。渐近框架旨在近似一个小的样本现象:尽管观测值的总数n可能很大,但截止值局部的有效观测值的数量通常很小。因此,尽管RDD中的传统渐近线需要越来越多的局部观测值作为 u2192 u221e,但我们的框架将局部局部观测值的q固定为n u2192 u221e。新测试易于实施,在弱条件下渐近有效,在比渐进有效性所需条件更强的条件下,具有有限的样本有效性,并且相对于基于均值的测试具有良好的功效。在仿真研究中,我们发现新的测试在整个设计中的尺寸控制非常好。然后,我们使用我们的测试来评估Lee(2008)中设计的有效性,该设计是RDD的知名应用程序,用于研究在职优势。

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  • 作者

    Ivan A Canay; Vishal Kamat;

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  • 年度 2017
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  • 原文格式 PDF
  • 正文语种 eng
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