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Statistical Power for the Comparative Regression Discontinuity Design With a Nonequivalent Comparison Group

机译:比较回归不连续设计的统计能力,具有不计比较组

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In the "sharp" regression discontinuity design (RD), all units scoring on one side of a designated score on an assignment variable receive treatment, whereas those scoring on the other side become controls. Thus the continuous assignment variable and binary treatment indicator are measured on the same scale. Because each must be in the impact model, the resulting multi-collinearity reduces the efficiency of the RD design. However, untreated comparison data can be added along the assignment variable, and a comparative regression discontinuity design (CRD) is then created. When the untreated data come from a non-equivalent comparison group, we call this CRD-CG. Assuming linear functional forms, we show that power in CRD-CG is (a) greater than in basic RD; (b) less sensitive to the location of the cutoff and the distribution of the assignment variable; and that (c) fewer treated units are needed in the basic RD component within the CRD-CG so that savings can result from having fewer treated cases. The theory we develop is used to make numerical predictions about the efficiency of basic RD and CRD-CG relative to each other and to a randomized control trial. Data from the National Head Start Impact study are used to test these predictions. The obtained estimates are closer to the predicted parameters for CRD-CG than for basic RD and are generally quite close to the parameter predictions, supporting the emerging argument that CRD should be the design of choice in many applications for which basic RD is now used.
机译:在“尖锐”回归不连续性设计(RD)中,所有单元在分配变量上指定分数的一侧进行了评分,而另一侧的评分则成为控制。因此,连续分配变量和二进制治疗指标以相同的量表进行测量。因为每个都必须在撞击模型中,所以所得的多重共线性降低了RD设计的效率。但是,可以沿分配变量添加未经处理的比较数据,然后创建比较回归不连续性设计(CRD)。当未经处理的数据来自非等效比较组时,我们称此CRD-CG。假设有线性函数形式,我们表明CRD-CG中的功率比基本RD大; (b)对截止位置和分配变量的分布较少敏感;并且(c)在CRD-CG中的基本RD组件中需要更少的处理单元,因此可以通过更少的治疗病例产生节省。我们开发的理论用于对基本RD和CRD-CG相对于彼此以及随机对照试验的效率做出数值预测。来自国家头启动影响研究的数据用于测试这些预测。所获得的估计值更接近CRD-CG的预测参数,而不是基本RD,并且通常非常接近参数预测,支持新兴的论点,即CRD应该是现在使用基本RD的许多应用程序中的选择。

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