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Spatiotemporal Modeling of Correlated Small-Area Outcomes: Analyzing the Shared and Type-Specific Patterns of Crime and Disorder

机译:相关的小区域成果的时空建模:分析犯罪和疾病的共有和特定类型的模式

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摘要

This research applies a Bayesian multivariate modeling approach to analyze the spatiotemporal patterns of physical disorder, social disorder, property crime, and violent crime at the small-area scale. Despite crime and disorder exhibiting similar spatiotemporal patterns, as hypothesized by broken windows and collective efficacy theories, past studies often analyze a single outcome and overlook the correlation structures between multiple crime and disorder types. Accounting for five covariates, the best-fitting model partitions the residual risk of each crime and disorder type into one spatial shared component, one temporal shared component, and type-specific spatial, temporal, and space-time components. The shared components capture the underlying spatial pattern and time trend common to all types of crime and disorder. Results show that population size, residential mobility, and the central business district are positively associated with all outcomes. The spatial shared component is found to explain the largest proportion of residual variability for all types of crime and disorder. Spatiotemporal hotspots of crime and disorder are examined to contextualize broken windows theory. Applications of multivariate spatiotemporal modeling with shared components to ecological crime theories and crime prevention policy are discussed.
机译:这项研究采用贝叶斯多元建模方法来分析小面积尺度上的身体疾病,社会疾病,财产犯罪和暴力犯罪的时空格局。尽管犯罪和混乱表现出类似的时空模式(如破窗和集体效力理论所假设),但过去的研究经常分析单个结果,却忽略了多种犯罪和混乱类型之间的相关结构。考虑到五个协变量,最佳拟合模型将每种犯罪和混乱类型的剩余风险划分为一个空间共享组件,一个时间共享组件以及特定于类型的空间,时间和时空组件。共享的组件捕获了所有类型的犯罪和混乱共同的潜在空间模式和时间趋势。结果表明,人口规模,居民流动性和中央商务区与所有结果均呈正相关。发现空间共享成分可以解释所有类型的犯罪和混乱的最大剩余变异性。对犯罪和混乱的时空热点进行了研究,以将破碎的窗户理论与背景联系起来。讨论了具有共享成分的多元时空模型在生态犯罪理论和犯罪预防政策中的应用。

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  • 来源
    《Geographical analysis》 |2019年第2期|221-248|共28页
  • 作者单位

    Univ Waterloo, Sch Planning, 200 Univ Ave West, Waterloo, ON, Canada;

    Northumbria Univ, Dept Math Phys & Elect Engn, Newcastle Upon Tyne, Tyne & Wear, England;

    Univ Waterloo, Sch Planning, 200 Univ Ave West, Waterloo, ON, Canada|Univ Waterloo, Sch Publ Hlth & Hlth Syst, Waterloo, ON, Canada;

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