一种数据驱动的基于主体的模拟,用于预测城市环境中的犯罪模式

Raquel Rosés, Cristina Kadar, N. Malleson
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引用次数: 18

摘要

空间犯罪模拟有助于我们理解驱动犯罪的机制,并可以支持决策者制定有效的减少犯罪战略。近年来,尽管数据驱动的犯罪模拟很少,但整合地理环境以生成犯罪模式的基于主体的模型已经出现。本文(1)确定了犯罪模式的许多重要驱动因素;(2)收集了相关的、公开可用的数据源,构建了一个具有与犯罪相关的静态和动态地理以及时间特征的gis层;(3)用这些层构建了一个虚拟的城市环境,在这个环境中,单个罪犯代理人可以导航;(4)提出了一种数据驱动的决策过程,利用机器学习让智能体根据对环境的感知来决定是否从事犯罪活动,最后(5)在模拟的城市环境中生成细粒度的犯罪模式。这项工作的新颖之处在于各种大规模数据层,在个体代理级别集成机器学习来处理数据层,以及由此产生的预测的高分辨率。结果表明,预测犯罪数量最高的街道段需要空间层、时间层和相互作用层。此外,空间层的信息量最大,这意味着空间数据对预测性能的贡献最大。因此,这些发现强调了纳入各种开放数据源的重要性,以及基于理论的、数据驱动的模拟的潜力,以实现犯罪预测。由此产生的模型可作为支持减少犯罪的预测工具和测试平台。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A data-driven agent-based simulation to predict crime patterns in an urban environment
Spatial crime simulations contribute to our understanding of the mechanisms that drive crime and can support decision-makers in developing effective crime reduction strategies. Agent-based models that integrate geographical environments to generate crime patterns have emerged in recent years, although data-driven crime simulations are scarce. This article (1) identifies numerous important drivers of crime patterns, (2) collects relevant, openly available data sources to build a GIS-layer with static and dynamic geographical, as well as temporal features relevant to crime, (3) builds a virtual urban environment with these layers, in which individual offender agents navigate, (4) proposes a data-driven decision-making process using machine-learning for the agents to decide whether to engage in criminal activity based on their perception of the environment and, finally, (5) generates fine-grained crime patterns in a simulated urban environment. The novelty of this work lies in the various large-scale data layers, the integration of machine learning at individual agent level to process the data layers, and the high resolution of the resulting predictions. The results show that the spatial, temporal, and interaction layers are all required to predict the top street segments with the highest number of crimes. In addition, the spatial layer is the most informative, which means that spatial data contributes most to predictive performance. Thus, these findings highlight the importance of the inclusion of various open data sources and the potential of theory-informed, data-driven simulations for the purpose of crime prediction. The resulting model is applicable as a predictive tool and as a test platform to support crime reduction.
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