Regression Discontinuity in Time: Considerations for Empirical Applications

Catherine Hausman, D. Rapson
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引用次数: 290

Abstract

Recent empirical work in several economic fields, particularly environmental and energy economics, has adapted the regression discontinuity (RD) framework to applications where time is the running variable and treatment begins at a particular threshold in time. In this guide for practitioners, we discuss several features of this regression discontinuity in time framework that differ from the more standard cross-sectional RD framework. First, many applications (particularly in environmental economics) lack cross-sectional variation and are estimated using observations far from the temporal threshold. This common empirical practice is hard to square with the assumptions of a cross-sectional RD, which is conceptualized for an estimation bandwidth shrinking even as the sample size increases. Second, estimates may be biased if the time-series properties of the data are ignored (for instance, in the presence of an autoregressive process), or more generally if short-run and long-run effects differ. Finally, tests for sorting or bunching near the threshold are often irrelevant, making the framework closer to an event study than a regression discontinuity design. Based on these features and motivated by hypothetical examples using air quality data, we offer suggestions for the empirical researcher wishing to use the RD in time framework.
时间上的回归不连续:经验应用的考虑
最近在几个经济领域,特别是环境和能源经济学领域的实证工作,已经将回归不连续(RD)框架应用于时间是运行变量和处理开始于特定时间阈值的应用中。在本指南中,我们讨论了与更标准的横断面RD框架不同的时间框架中这种回归不连续的几个特征。首先,许多应用(特别是在环境经济学中)缺乏横断面变化,并且使用远离时间阈值的观测值进行估计。这种常见的经验实践很难与横截面RD的假设相一致,横截面RD的概念是即使样本量增加,估计带宽也会缩小。其次,如果忽略数据的时间序列属性(例如,在存在自回归过程的情况下),或者更一般地说,如果短期和长期影响不同,估计可能会有偏差。最后,在阈值附近进行排序或聚集的测试通常是不相关的,这使得框架更接近于事件研究,而不是回归不连续设计。基于这些特征,并以使用空气质量数据的假设示例为动机,我们为希望在时间框架内使用RD的实证研究者提供了建议。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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