用地标模拟犯罪事件的时空网络点过程

Zheng Dong, Jorge Mateu, Yao Xie
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引用次数: 0

摘要

自激点过程被广泛用于模拟连续地理空间内犯罪事件的传染效应,使用的是事件发生的时间和地点。然而,在城市环境中,大多数事件都天然地受限于城市的街道网络结构,犯罪的传染效应也受制于这种网络地理结构。同时,城市基础设施的复杂分布也在塑造跨空间犯罪模式方面发挥着重要作用。我们为犯罪建模引入了一个新颖的时空网络点过程框架,该框架通过纳入自我关注图神经网络将这些城市环境特征整合在一起。我们的框架将街道网络结构作为底层事件空间,犯罪事件可能发生在网络边缘的随机位置。为了真实地捕捉犯罪运动模式,我们使用街道网络距离来测量事件之间的距离。然后,我们通过将犯罪事件的犯罪类别与其附近地标的类型连接起来,为犯罪事件提出一个新的标记,旨在捕捉城市设计如何影响各种犯罪类型的混合结构。我们采用了注意力图网络结构来学习标记与标记之间的交互作用。对西班牙巴伦西亚的犯罪数据进行的大量实验证明了我们的框架在理解犯罪景观和预测跨区域犯罪风险方面的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Spatio-Temporal-Network Point Processes for Modeling Crime Events with Landmarks
Self-exciting point processes are widely used to model the contagious effects of crime events living within continuous geographic space, using their occurrence time and locations. However, in urban environments, most events are naturally constrained within the city's street network structure, and the contagious effects of crime are governed by such a network geography. Meanwhile, the complex distribution of urban infrastructures also plays an important role in shaping crime patterns across space. We introduce a novel spatio-temporal-network point process framework for crime modeling that integrates these urban environmental characteristics by incorporating self-attention graph neural networks. Our framework incorporates the street network structure as the underlying event space, where crime events can occur at random locations on the network edges. To realistically capture criminal movement patterns, distances between events are measured using street network distances. We then propose a new mark for a crime event by concatenating the event's crime category with the type of its nearby landmark, aiming to capture how the urban design influences the mixing structures of various crime types. A graph attention network architecture is adopted to learn the existence of mark-to-mark interactions. Extensive experiments on crime data from Valencia, Spain, demonstrate the effectiveness of our framework in understanding the crime landscape and forecasting crime risks across regions.
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