Exposure to crime and violence can harm individuals' quality of life and the economic growth of communities. In light of the rapid development in machine learning, there is a rise in the need to explore automated solutions to prevent crimes. With the increasing availability of both fine-grained urban and public service data, there is a recent surge in fusing such cross-domain information to facilitate crime prediction. By capturing the information about social structure, environment, and crime trends, existing machine learning predictive models have explored the dynamic crime patterns from different views. However, these approaches mostly convert such multi-source knowledge into implicit and latent representations (e.g., learned embeddings of districts), making it still a challenge to investigate the impacts of explicit factors for the occurrences of crimes behind the scenes. In this paper, we present a Spatial-Temporal Metapath guided Explainable Crime prediction (STMEC) framework to capture dynamic patterns of crime behaviours and explicitly characterize how the environmental and social factors mutually interact to produce the forecasts. Extensive experiments show the superiority of STMEC compared with other advanced spatiotemporal models, especially in predicting felonies (e.g., robberies and assaults with dangerous weapons).
翻译:鉴于机器学习的迅速发展,探索预防犯罪的自动化解决办法的必要性正在增加,随着城市和公共服务领域微小数据的提供,最近利用此类跨领域信息以方便犯罪预测的激增;通过获取关于社会结构、环境和犯罪趋势的信息,现有机器学习预测模型从不同观点探索了动态犯罪模式;然而,这些方法大多将这种多来源知识转化为隐含和潜在表现(例如,了解了各地区的嵌入),使得调查犯罪现场犯罪发生的明确因素的影响仍然是一项挑战;在本文件中,我们提出了一个空间-时现时可解释犯罪预测(STMEC)框架,以捕捉犯罪行为的动态模式,并明确描述环境和社会因素如何相互作用以产生预测;广泛实验显示STMEC与其他先进的时空模型相比具有优越性,特别是在预测重罪(例如,抢劫和用危险武器袭击)方面。