Space and circular time log Gaussian Cox processes with application to crime event data

Shinichiro Shirota, A. Gelfand
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引用次数: 55

Abstract

We view the locations and times of a collection of crime events as a space-time point pattern. So, with either a nonhomogeneous Poisson process or with a more general Cox process, we need to specify a space-time intensity. For the latter, we need a \emph{random} intensity which we model as a realization of a spatio-temporal log Gaussian process. Importantly, we view time as circular not linear, necessitating valid separable and nonseparable covariance functions over a bounded spatial region crossed with circular time. In addition, crimes are classified by crime type. Furthermore, each crime event is recorded by day of the year which we convert to day of the week marks. The contribution here is to develop models to accommodate such data. Our specifications take the form of hierarchical models which we fit within a Bayesian framework. In this regard, we consider model comparison between the nonhomogeneous Poisson process and the log Gaussian Cox process. We also compare separable vs. nonseparable covariance specifications. Our motivating dataset is a collection of crime events for the city of San Francisco during the year 2012. We have location, hour, day of the year, and crime type for each event. We investigate models to enhance our understanding of the set of incidences.
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空间和循环时间对数高斯Cox处理在犯罪事件数据中的应用
我们把一系列犯罪事件发生的地点和时间看作是一个时空点模式。所以,无论是非齐次泊松过程还是更一般的考克斯过程,我们都需要指定一个时空强度。对于后者,我们需要一个\emph{随机}强度,我们将其建模为一个时空对数高斯过程的实现。重要的是,我们认为时间是循环的,而不是线性的,需要有效的可分离和不可分离的协方差函数在一个有界的空间区域与循环时间交叉。此外,还根据犯罪类型对犯罪进行分类。此外,每个犯罪事件都是按一年中的一天记录的,我们将其转换为星期几的标记。这里的贡献是开发适应这些数据的模型。我们的规范采用层次模型的形式,我们将其放入贝叶斯框架中。在这方面,我们考虑非齐次泊松过程和对数高斯Cox过程的模型比较。我们还比较了可分离和不可分离的协方差规格。我们的激励数据集是2012年旧金山市犯罪事件的集合。我们有每个事件的地点、时间、日期和犯罪类型。我们研究模型以增强我们对一系列事件的理解。
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