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首页> 外文期刊>Journal of the American statistical association >Self-Exciting Point Process Modeling of Crime
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Self-Exciting Point Process Modeling of Crime

机译:犯罪的自激点过程建模

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Highly clustered event sequences are observed in certain types of crime data, such as burglary and gang violence, due to crime-specific patterns of criminal behavior. Similar clustering patterns are observed by seismologists, as earthquakes are well known to increase the risk of subsequent earthquakes, or aftershocks, near the location of an initial event. Space-time clustering is modeled in seismology by self-exciting point processes and the focus of this article is to show that these methods are well suited for criminological applications. We first review self-exciting point processes in the context of seismology. Next, using residential burglary data provided by the Los Angeles Police Department, we illustrate the implementation of self-exciting point process models in the context of urban crime. For this purpose we use a fully nonparametric estimation methodology to gain insight into the form of the space-time triggering function and temporal trends in the background rate of burglary.
机译:由于特定于犯罪的犯罪行为模式,在某些类型的犯罪数据中发现了高度聚类的事件序列,例如入室盗窃和帮派暴力。地震学家观察到类似的聚类模式,因为众所周知,地震会增加在初始事件发生地点附近发生后续地震或余震的风险。时空聚类是通过自激点过程在地震学中建模的,本文的重点是表明这些方法非常适合犯罪学应用。我们首先回顾地震学中的自激点过程。接下来,我们使用洛杉矶警察局提供的住宅入室盗窃数据,说明了在城市犯罪背景下自激点过程模型的实现。为此,我们使用一种完全非参数的估算方法来了解时空触发功能的形式以及入室盗窃的背景发生时间趋势。

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