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Towards Simulating Criminal Offender Movement Based on Insights from Human Dynamics and Location-Based Social Networks

机译:基于人类动态和基于位置的社交网络的见解模拟刑事犯罪运动

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Interest in data-driven crime simulations has been growing in recent years, confirming its potential to advance crime prevention and prediction. Especially, the use of new data sources in crime simulation models can contribute towards safer and smarter cities. Previous work on agent-based models for crime simulations have intended to simulate offender behavior in a geographical environment, relying exclusively on a small sample of offender homes and crime locations. The complex dynamics of crime and the lack of information on criminal offender's movement patterns challenge the design of offender movement in simulations. At the same time, the availability of big, GPS-based user data samples (mobile data, social media data, etc.) already allowed researchers to determine the laws governing human mobility patterns, which, we argue, could inform offender movement. In this paper, we explore: (1) the use of location-based venue data from Foursquare in New York City (NYC), and (2) human dynamics insights from previous studies to simulate offender movement. We study 9 offender mobility designs in an agent-based model, combining search distances strategies (static, uniform distributed, and Levy-flight approximation) and target selection algorithms (random intersection, random Foursquare venues, and popular Foursquare venues). The offender behavior performance is measured using the ratio of crime locations passed vs average distance traveled by each offender. Our initial results show that agents moving between POI perform best, while the performance of the three search distance strategies is similar. This work provides a step forward towards more realistic crime simulations.
机译:在数据驱动的犯罪模拟的兴趣一直在增长,近年来,确认其预防犯罪的提前预测和潜力。特别是,利用犯罪仿真模型,新的数据源可以实现更安全,更智能的城市做出贡献。对犯罪模拟基于代理的模型先前的工作已经用来模拟罪犯的行为在地理环境,专门对罪犯家庭和作案地点的一个小样本的依赖。犯罪的复杂动态以及缺乏对犯罪嫌疑人的运动模式的信息挑战罪犯运动的模拟设计。与此同时,大的可用性,基于GPS的用户数据样本(移动数据,社交媒体数据等)已经允许研究人员确定了人类出行模式,其中,我们认为,可以通知犯罪的运动规律。在本文中,我们将探讨:(1)利用从四方在纽约市(NYC),并从以前的研究(2)人类动力学的见解基于位置的地点数据来模拟罪犯的运动。我们在基于代理的模型研究9罪犯流动性的设计,组合搜索距离策略(静态,分布均匀,和Levy飞行逼近)和目标选择算法(随机路口,随机四方场地,和流行的Foursquare的场所)。罪犯行为性能是使用传递VS由每个罪犯行进的平均距离犯罪位置的比率。我们的初步结果表明,代理POI之间移动表现最好,而三大搜索距离策略的效果是相似的。这项工作提供了向前迈进了一步走向更真实的模拟犯罪。

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