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Analyzing Hotspots of Crime Using a Bayesian Spatiotemporal Modeling Approach: A Case Study of Violent Crime in the Greater Toronto Area

机译:使用贝叶斯时空建模方法分析犯罪热点:大多伦多地区暴力犯罪案例研究

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摘要

Conventional methods used to identify crime hotspots at the small-area scale are frequentist and employ data for one time period. Methodologically, these approaches are limited by an inability to overcome the small number problem, which occurs in spatiotemporal analysis at the small-area level when crime and population counts for areas are low. The small number problem may lead to unstable risk estimates and unreliable results. Also, conventional approaches use only one data observation per area, providing limited information about the temporal processes influencing hotspots and how law enforcement resources should be allocated to manage crime change. Examining violent crime in the Regional Municipality of York, Ontario, for 2006 and 2007, this research illustrates a Bayesian spatiotemporal modeling approach that analyzes crime trend and identifies hotspots while addressing the small number problem and overcoming limitations of conventional frequentist methods. Specifically, this research tests for an overall trend of violent crime for the study region, determines area-specific violent crime trends for small-area units, and identifies hotspots based on crime trend from 2006 to 2007. Overall violent crime trend was found to be insignificant despite increasing area-specific trends in the north and decreasing area-specific trends in the southeast. Posterior probabilities of area-specific trends greater than zero were mapped to identify hotspots, highlighting hotspots in the north of the study region. We discuss the conceptual differences between this Bayesian spatiotemporal method and conventional frequentist approaches as well as the effectiveness of this Bayesian spatiotemporal approach for identifying hotspots from a law enforcement perspective.
机译:用于识别小面积犯罪热点的常规方法是频繁使用的,并且使用一个时间段的数据。从方法上讲,这些方法受到无法克服小数目问题的限制,小数目问题发生在小区域级别的时空分析中,而该地区的犯罪和人口数量较少。数量少的问题可能导致不稳定的风险估计和不可靠的结果。而且,常规方法每个区域仅使用一个数据观察,提供了有关影响热点的时间过程以及应如何分配执法资源来管理犯罪变化的有限信息。这项研究以安大略省约克地区自治市为例,研究了2006年和2007年的暴力犯罪行为,提出了一种贝叶斯时空建模方法,该方法可以分析犯罪趋势并确定热点,同时解决数量少的问题和克服常规频繁使用方法的局限性。具体而言,本研究测试了研究区域的暴力犯罪总体趋势,确定了小区域单位的特定区域暴力犯罪趋势,并根据2006年至2007年的犯罪趋势确定了热点地区。发现总体暴力犯罪趋势为尽管北部的特定区域趋势增加而东南部的特定区域趋势减少,但微不足道。绘制了区域特定趋势大于零的后验概率,以识别热点,突出显示研究区域北部的热点。我们讨论了这种贝叶斯时空方法与常规频度方法之间的概念差异,以及这种贝叶斯时空方法从执法角度确定热点的有效性。

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  • 来源
    《Geographical analysis》 |2015年第1期|1-19|共19页
  • 作者单位

    School of Planning University of Waterloo Waterloo Ontario Canada;

    School of Public Health and Health Systems University of Waterloo Waterloo Ontario Canada;

    School of Planning University of Waterloo Waterloo Ontario Canada;

    Trinity Hall College University of Cambridge Cambridge U.K.;

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