犯罪事件的时空广义加性模型

Xiaofeng Wang, Donald E. Brown
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引用次数: 28

摘要

执法机构需要模拟犯罪事件的时空模式。有了完善的模型,他们可以研究犯罪的因果关系,预测未来的犯罪事件,他们可以利用这些结果来帮助预防犯罪。在本文中,我们描述了我们新开发的时空广义加性模型(S-T GAM)来发现与犯罪相关的潜在因素并预测未来的事件。该模型可以充分利用空间、时间、地理、人口等多种不同类型的数据进行预测。我们使用迭代重新加权的最小二乘和最大似然有效地估计了S-T GAM的参数,并提供了模型的可解释性。在本文中,我们用弗吉尼亚州夏洛茨维尔的实际犯罪事件数据展示了S-T GAM的评估。评价结果表明,S-T GAM在预测未来犯罪事件方面优于以往的空间预测模型。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
The spatio-temporal generalized additive model for criminal incidents
Law enforcement agencies need to model spatio-temporal patterns of criminal incidents. With well developed models, they can study the causality of crimes and predict future criminal incidents, and they can use the results to help prevent crimes. In this paper, we described our newly developed spatio-temporal generalized additive model (S-T GAM) to discover underlying factors related to crimes and predict future incidents. The model can fully utilize many different types of data, such as spatial, temporal, geographic, and demographic data, to make predictions. We efficiently estimated the parameters for S-T GAM using iteratively re-weighted least squares and maximum likelihood and the resulting estimates provided for model interpretability. In this paper we showed the evaluation of S-T GAM with the actual criminal incident data from Charlottesville, Virginia. The evaluation results showed that S-T GAM outperformed the previous spatial prediction models in predicting future criminal incidents.
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