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Filaments of crime: Informing policing via thresholded ridge estimation

机译:犯罪的细则:通过阈值脊髓估计通知警务

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In this study, we investigate the potential for optimizing hot spot patrol routes through density ridge estimation. We explore the application of an extended version of the subspace-constrained mean shift algorithm by using 2018 and 2019 Part I crime data from Chicago. Ultimately, the goal of mapping hot spots is to show concentrations of crime, thus targeting the epicenters only focuses on one problem area. For this reason, we refine patrol optimization to focus on the critical ridges in hot spots. In doing so, we extract density ridges of 2018 to early 2019 Part I crime incidents from Chicago to demonstrate that nonlinear mode-following ridges agree with broader kernel density estimations. We create multi-run confidence intervals and show that our patrol templates cover around 94% of incidents for 0.1-mile envelopes around ridges, and deliver evidence that ridges following crime densities enhances the efficiency of patrols. Our post-hoc tests show the stability of ridges, thus offering an alternative patrol route option that is effective and efficient.
机译:在这项研究中,我们研究了通过密度脊估计优化热点巡逻路线的可能性。我们探讨了从芝加哥2018年和2019年I犯罪数据使用2018年和2019年犯罪数据的延长版本的子空间约束平均移位算法。最终,映射热点的目标是表现出犯罪的浓度,从而瞄准震中只关注一个问题区域。出于这个原因,我们将巡逻优化精确到热点中的临界山脊。在此过程中,我们提取的2018密度脊从芝加哥早2019第I部分犯罪事件证明非线性模式下脊与更广泛的核密度估计一致。我们创造了多运行的置信区间,并显示我们的巡逻模板涵盖山脊周围0.1英里信封的94%的事件,并提供证据,犯罪密度后的山脊增强了巡逻的效率。我们的后HOC测试显示了脊的稳定性,从而提供了一种有效和有效的替代巡逻路由选项。

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