Micro-Level Incident Analysis using Spatial Association Rule Mining

J. S. Yoo, Sang Jun Park, Aneesh Raman
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引用次数: 2

Abstract

Criminological research and theory have traditionally focused on individual offenders and macro-level analysis to characterize crime distribution. However local aspects of crime activities have been also recognized as important factors in crime analysis. It is an interesting problem to discover implicit local patterns between crime activities and environmental factors such as nearby facilities and business establishment types. This work presents micro-level analysis of criminal incidents using spatial association rule mining. We show how to process crime incident points and their spatial relationships with task-relevant other spatial features, and discover interesting crime patterns using an association rule mining algorithm. A case study was conducted with real incident records and points of interest in a study area to discover interesting relationship patterns among crimes, their characteristics, and nearby spatial features. This study shows that our approach with spatial association rule mining is promising for micro-level analysis of crime.
基于空间关联规则挖掘的微观事件分析
犯罪学的研究和理论传统上侧重于罪犯个人和宏观层面的分析,以表征犯罪分布。然而,犯罪活动的地方方面也被认为是犯罪分析中的重要因素。发现犯罪活动与环境因素(如附近的设施和商业机构类型)之间隐含的地方模式是一个有趣的问题。这项工作提出了使用空间关联规则挖掘对犯罪事件进行微观分析。我们展示了如何处理犯罪事件点及其与任务相关的其他空间特征的空间关系,并使用关联规则挖掘算法发现有趣的犯罪模式。通过对研究区域内的真实事件记录和兴趣点进行案例研究,发现犯罪之间有趣的关系模式、特征和附近的空间特征。该研究表明,我们的空间关联规则挖掘方法在微观层面的犯罪分析中是有前景的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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