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Spatial analysis with preference specification of latent decision makers for criminal event prediction

机译:具有潜在决策者偏好规范的空间分析,用于犯罪事件预测

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Spatial analysis looks for statistically significant patterns in observed events that occur at specified locations. Most examples of spatial analysis consider aggregate characteristics over a number of coarsely defined regions rather than point processes. However, criminal events are point processes and should be modeled as such. In this paper, we combine recent advances in discrete choice theory and data mining to develop point process models for spatial analysis. We use this new methodology to analyze and predict the spatial behavior of criminals, and more generally, latent decision makers. The paper compares the performance of this methodology to more traditional hot spot methods of crime analysis.
机译:空间分析在指定位置发生的观察事件中寻找具有统计意义的模式。空间分析的大多数示例都考虑了多个粗略定义的区域上的集合特征,而不是点过程。但是,犯罪事件是关键过程,因此应建模。在本文中,我们结合了离散选择理论和数据挖掘的最新进展,以开发用于空间分析的点过程模型。我们使用这种新方法来分析和预测犯罪分子的空间行为,更广泛地来说,是潜在的决策者。本文将这种方法的性能与更传统的犯罪分析热点方法进行了比较。

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