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A simple and trustworthy asymptotic t test in difference-in-differences regressions

机译:差异差异回归的简单且值得信赖的渐近性T测试

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摘要

We propose an asymptotically valid t test that uses Student's t distribution as the reference distribution in a difference-in-differences regression. For the asymptotic variance estimation, we adopt the clustering-by-time approach to accommodate cross-sectional dependence. This approach often assumes the clusters to be independent across time, but we allow them to be temporally dependent. The proposed t test is based on a special heteroscedasticity and autocorrelation robust (HAR) variance estimator. We target the type I and type II errors and develop a testing-oriented method to select the underlying smoothing parameter. By capturing the estimation uncertainty of the HAR variance estimator, the t test has more accurate size than the corresponding normal test and is just as powerful as the latter. Compared to the nonstandard test developed in the literature, the standard t test is just as accurate but much more convenient to use. Model-based and empirical-data-based Monte Carlo simulations show that the t test works quite well in finite samples. (C) 2019 Elsevier B.V. All rights reserved.
机译:我们提出了一种渐近有效的T测试,它使用学生的T分配作为差异差异回归中的参考分布。对于渐近方差估计,我们采用逐时方法来适应横截面依赖。这种方法通常假设群集在时间上独立,但我们允许它们在时间上依赖。所提出的T检验基于特殊的异源性和自相关鲁棒(HAR)方差估计器。我们针对I类型和II型错误,并开发面向测试的方法,以选择底层平滑参数。通过捕获HAR方差估计器的估计不确定性,T测试具有比相应的正常测试更精确的尺寸,并且与后者一样强大。与文献中开发的非标准测试相比,标准T检验就像准确,但使用更方便。基于模型和基于实验数据的蒙特卡罗模拟表明,T测试在有限的样本中工作得很好。 (c)2019年Elsevier B.V.保留所有权利。

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