Modeling and Estimation for Self-Exciting Spatio-Temporal Models of Terrorist Activity

Nicholas J. Clark, P. Dixon
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引用次数: 34

Abstract

Spatio-temporal hierarchical modeling is an extremely attractive way to model the spread of crime or terrorism data over a given region, especially when the observations are counts and must be modeled discretely. The spatio-temporal diffusion is placed, as a matter of convenience, in the process model allowing for straightforward estimation of the diffusion parameters through Bayesian techniques. However, this method of modeling does not allow for the existence of self-excitation, or a temporal data model dependency, that has been shown to exist in criminal and terrorism data. In this manuscript we will use existing theories on how violence spreads to create models that allow for both spatio-temporal diffusion in the process model as well as temporal diffusion, or self-excitation, in the data model. We will further demonstrate how Laplace approximations similar to their use in Integrated Nested Laplace Approximation can be used to quickly and accurately conduct inference of self-exciting spatio-temporal models allowing practitioners a new way of fitting and comparing multiple process models. We will illustrate this approach by fitting a self-exciting spatio-temporal model to terrorism data in Iraq and demonstrate how choice of process model leads to differing conclusions on the existence of self-excitation in the data and differing conclusions on how violence is spreading spatio-temporally.
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恐怖活动自激时空模型的建模与估计
时空分层建模是一种非常有吸引力的方法来模拟犯罪或恐怖主义数据在给定区域的传播,特别是当观测值是计数的并且必须离散建模时。为了方便起见,将时空扩散置于过程模型中,允许通过贝叶斯技术直接估计扩散参数。然而,这种建模方法不允许存在自激励或时间数据模型依赖,而犯罪和恐怖主义数据中已显示存在这种依赖。在本文中,我们将使用现有的关于暴力如何传播的理论来创建模型,这些模型既允许过程模型中的时空扩散,也允许数据模型中的时间扩散或自激。我们将进一步演示如何使用与集成嵌套拉普拉斯近似相似的拉普拉斯近似来快速准确地进行自激时空模型的推理,从而为从业者提供一种拟合和比较多个过程模型的新方法。我们将通过将自激时空模型拟合到伊拉克的恐怖主义数据来说明这种方法,并展示过程模型的选择如何导致关于数据中存在自激的不同结论,以及关于暴力如何在时空上传播的不同结论。
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