Crime prevention measures, aiming for the effective and efficient spending of public resources, rely on the empirical analysis of spatial and temporal data for public safety outcomes. We perform a variable-density cluster analysis on crime incident reports in the City of Chicago for the years 2001--2022 to investigate changes in crime share composition for hot spots of different densities. Contributing to and going beyond the existing wealth of research on criminological applications in the operational research literature, we study the evolution of crime type shares in clusters over the course of two decades and demonstrate particularly notable impacts of the COVID-19 pandemic and its associated social contact avoidance measures, as well as a dependence of these effects on the primary function of city areas. Our results also indicate differences in the relative difficulty to address specific crime types, and an analysis of spatial autocorrelations further shows variations in incident uniformity between clusters and outlier areas at different distance radii. We discuss our findings in the context of the interplay between operational research and criminal justice, the practice of hot spot policing and public safety optimization, and the factors contributing to, and challenges and risks due to, data biases as an often neglected factor in criminological applications.
翻译:旨在实现公共资源有效且高效配置的犯罪预防措施,依赖于对公共安全结果时空数据的实证分析。我们对芝加哥市2001年至2022年的犯罪事件报告进行变密度聚类分析,以探究不同密度热点区域犯罪构成比例的变化。在丰富现有运筹学文献中犯罪学应用研究的基础上,我们进一步研究了二十年间聚类区域内犯罪类型占比的演变,并特别揭示了COVID-19大流行及其相关社交接触规避措施的显著影响,以及这些影响对城市区域主要功能的依赖性。研究结果还表明,针对特定犯罪类型的治理难度存在相对差异;空间自相关分析进一步揭示了不同距离半径下,聚类区域与离群区域在事件分布均匀性上的变化。我们将研究结果置于运筹学与刑事司法交叉、热点警务实践与公共安全优化、以及数据偏差(作为犯罪学应用中常被忽视的因素)的成因、挑战与风险的背景下进行讨论。