Permutation‐based tests for discontinuities in event studies

IF 1.9 3区 经济学 Q2 ECONOMICS Quantitative Economics Pub Date : 2020-07-20 DOI:10.3982/qe1775
Federico A. Bugni, Jia Li, Qiyuan Li
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Abstract

We propose using a permutation test to detect discontinuities in an underlying economic model at a known cutoff point. Relative to the existing literature, we show that this test is well suited for event studies based on time‐series data. The test statistic measures the distance between the empirical distribution functions of observed data in two local subsamples on the two sides of the cutoff. Critical values are computed via a standard permutation algorithm. Under a high‐level condition that the observed data can be coupled by a collection of conditionally independent variables, we establish the asymptotic validity of the permutation test, allowing the sizes of the local subsamples to be either be fixed or grow to infinity. In the latter case, we also establish that the permutation test is consistent. We demonstrate that our high‐level condition can be verified in a broad range of problems in the infill asymptotic time‐series setting, which justifies using the permutation test to detect jumps in economic variables such as volatility, trading activity, and liquidity. These potential applications are illustrated in an empirical case study for selected FOMC announcements during the ongoing COVID‐19 pandemic.
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事件研究中基于排列的不连续检验
我们建议使用排列测试来检测在已知临界点的潜在经济模型中的不连续性。相对于现有文献,我们表明该测试非常适合基于时间序列数据的事件研究。检验统计量测量截止线两侧两个局部子样本中观测数据的经验分布函数之间的距离。临界值是通过标准排列算法计算的。在观测数据可以由一组条件独立变量耦合的高水平条件下,我们建立了置换检验的渐近有效性,允许局部子样本的大小固定或增长到无穷大。在后一种情况下,我们还证明了置换检验是一致的。我们证明,我们的高水平条件可以在填充渐近时间序列设置的广泛问题中得到验证,这证明了使用排列检验来检测经济变量(如波动性、交易活动和流动性)的跳跃是合理的。这些潜在应用在正在进行的2019冠状病毒病疫情期间联邦公开市场委员会公告的实证案例研究中得到了说明。
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来源期刊
CiteScore
4.10
自引率
5.60%
发文量
28
审稿时长
52 weeks
期刊最新文献
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