We study variation in policing outcomes attributable to differential policing practices in New York City (NYC) using geographic regression discontinuity designs (GeoRDDs). By focusing on small geographic windows near police precinct boundaries we can estimate local average treatment effects of precincts on arrest rates. The standard GeoRDD relies on continuity assumptions of the potential outcome surface or a local randomization assumption within a window around the boundary. These assumptions, however, can easily be violated in realistic applications. We develop a novel and robust approach to testing whether there are differences in policing outcomes that are caused by differences in police precincts across NYC. In particular, our test is robust to violations of the assumptions traditionally made in GeoRDDs and is valid under much weaker assumptions. We use a unique form of resampling to identify new geographic boundaries that are known to have no treatment effect, which provides a valid estimate of our test statistic's null distribution even under violations of standard assumptions. This procedure gives substantially different results in the analysis of NYC arrest rates than those that rely on standard assumptions, thereby providing more robust tests of the effect of police precincts on arrest rates in NYC.
翻译:我们利用地理回归不连续设计(GeoRDDs)来研究纽约市不同警务做法导致的警务结果差异。通过侧重于靠近警区边界的小型地理窗口,我们可以估计逮捕率对地方平均待遇的影响。标准地理资源开发所依据的是潜在结果表面的连续性假设或边界周围一个窗口内的局部随机化假设,但这些假设很容易在现实应用中被违反。我们开发了一种新的和稳健的方法,以测试由于全州警区差异造成的警务结果差异。特别是,我们的测试对违反传统上在警区边界上作出的假设十分有力,并且在薄弱得多的假设下是有效的。我们使用一种独特的重新取样形式来确定已知没有治疗效果的新地理界限,这为我们测试统计的无效分布提供了有效的估计,即使违反了标准假设,也违反了标准统计。这一程序在分析纽约警区逮捕率方面的结果与依据标准假设的结果大不相同,从而提供了对警察局对纽约市逮捕率的影响的可靠测试。