Department of Information Engineering and Computer Science, University of Trento, Via Sommarive, 9I, 38123, Povo, TN, Italy.
Mobs Lab, Fondazione Bruno Kessler, Via Sommarive 18, 38123, Povo, TN, Italy.
Sci Rep. 2020 Aug 17;10(1):13871. doi: 10.1038/s41598-020-70808-2.
Nowadays, 23% of the world population lives in multi-million cities. In these metropolises, criminal activity is much higher and violent than in either small cities or rural areas. Thus, understanding what factors influence urban crime in big cities is a pressing need. Seminal studies analyse crime records through historical panel data or analysis of historical patterns combined with ecological factor and exploratory mapping. More recently, machine learning methods have provided informed crime prediction over time. However, previous studies have focused on a single city at a time, considering only a limited number of factors (such as socio-economical characteristics) and often at large in a single city. Hence, our understanding of the factors influencing crime across cultures and cities is very limited. Here we propose a Bayesian model to explore how violent and property crimes are related not only to socio-economic factors but also to the built environmental (e.g. land use) and mobility characteristics of neighbourhoods. To that end, we analyse crime at small areas and integrate multiple open data sources with mobile phone traces to compare how the different factors correlate with crime in diverse cities, namely Boston, Bogotá, Los Angeles and Chicago. We find that the combined use of socio-economic conditions, mobility information and physical characteristics of the neighbourhood effectively explain the emergence of crime, and improve the performance of the traditional approaches. However, we show that the socio-ecological factors of neighbourhoods relate to crime very differently from one city to another. Thus there is clearly no "one fits all" model.
如今,全球有 23%的人口居住在人口超过百万的城市中。在这些特大城市中,犯罪活动的发生率远高于小城市或农村地区,犯罪行为也更为暴力。因此,了解哪些因素会影响大城市的城市犯罪是当务之急。开创性的研究通过历史面板数据或历史模式分析与生态因素和探索性映射相结合来分析犯罪记录。最近,机器学习方法已经提供了随时间推移的犯罪预测。然而,以前的研究一次只关注一个城市,只考虑了有限数量的因素(如社会经济特征),而且往往在一个城市中进行大规模研究。因此,我们对不同文化和城市影响犯罪的因素的理解非常有限。在这里,我们提出了一种贝叶斯模型来探讨暴力和财产犯罪不仅与社会经济因素有关,还与邻里的建成环境(例如土地利用)和流动特征有关。为此,我们分析了小区域的犯罪情况,并整合了多个开放数据源和移动电话轨迹,以比较不同城市(即波士顿、波哥大、洛杉矶和芝加哥)的不同因素与犯罪的相关性。我们发现,社会经济条件、流动信息和邻里物理特征的综合使用可以有效地解释犯罪的出现,并提高传统方法的性能。然而,我们表明,邻里的社会生态因素与犯罪的关系在不同城市之间存在很大差异。因此,显然没有“一刀切”的模式。