We discuss some causal estimands used to study racial discrimination in policing. A central challenge is that not all police-civilian encounters are recorded in administrative datasets and available to researchers. One possible solution is to consider the average causal effect of race conditional on the civilian already being detained by the police. We find that such an estimand can be quite different from the more familiar ones in causal inference and needs to be interpreted with caution. We propose using an estimand new for this context -- the causal risk ratio, which has more transparent interpretation and requires weaker identification assumptions. We demonstrate this through a reanalysis of the NYPD Stop-and-Frisk dataset. Our reanalysis shows that the naive estimator that ignores the post-treatment selection in administrative records may severely underestimate the disparity in police violence between minorities and whites in these and similar data.
翻译:我们讨论了用于研究警务中种族歧视的一些因果估计值。一个中心挑战是,并非所有的警察-文职人员遭遇都记录在行政数据集中,研究人员都可以查阅。一个可能的解决办法是,考虑种族对已经被警察拘留的平民的平均因果影响。我们发现,这种估计值与更熟悉的因果推断值大不相同,需要谨慎解释。我们提议在这方面使用新的估计值,即因果风险比率,这种比率有更透明的解释,需要较弱的识别假设。我们通过重新分析纽约警察局的 " 停止和风险 " 数据集来证明这一点。我们的重新分析表明,无视行政记录中选择治疗后选择的天真的估计值可能严重低估了这些数据和类似数据中少数群体与白人之间在警察暴力方面的差异。