基于活动空间的犯罪定位预测

M. A. Tayebi, M. Ester, U. Glässer, P. Brantingham
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引用次数: 31

摘要

减少和预防犯罪战略对于决策者和执法部门来说至关重要,因为到2030年城市人口预计增长所带来的副作用是城市犯罪率不可避免地上升。研究得出的结论是,犯罪并不是均匀地发生在城市景观中,而是集中在某些区域。这一现象引起了人们对空间犯罪分析的关注,主要集中在犯罪热点地区,即犯罪密度异常高的地区。在本文中,我们提出了CRIMETRACER,这是一种基于个性化随机漫步的空间犯罪分析和热点以外的犯罪位置预测方法。我们提出了已知违法者在其活动空间内空间行为的概率模型。犯罪模式理论的结论是,罪犯不会冒险进入未知的领域,而是经常利用在他们最熟悉的地方遇到的机会,进行机会性犯罪和连环暴力犯罪,作为他们活动空间的一部分。我们在一个大型真实犯罪数据集上的实验表明,CRIMETRACER优于我们在这里评估的用于位置推荐的所有其他方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
CRIMETRACER: Activity space based crime location prediction
Crime reduction and prevention strategies are vital for policymakers and law enforcement to face inevitable increases in urban crime rates as a side effect of the projected growth of urban population by the year 2030. Studies conclude that crime does not occur uniformly across urban landscapes but concentrates in certain areas. This phenomenon has drawn attention to spatial crime analysis, primarily focusing on crime hotspots, areas with disproportionally higher crime density. In this paper we present CRIMETRACER, a personalized random walk based approach to spatial crime analysis and crime location prediction outside of hotspots. We propose a probabilistic model of spatial behavior of known offenders within their activity space. Crime Pattern Theory concludes that offenders, rather than venture into unknown territory, frequently commit opportunistic crimes and serial violent crimes by taking advantage of opportunities they encounter in places they are most familiar with as part of their activity space. Our experiments on a large real-world crime dataset show that CRIMETRACER outperforms all other methods used for location recommendation we evaluate here.
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