Detecting Crime Series Based on Route Estimation and Behavioral Similarity

Anton Borg, Martin Boldt, J. Eliasson
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引用次数: 2

Abstract

A majority of crimes are committed by a minority of offenders. Previous research has provided some support for the theory that serial offenders leave behavioral traces on the crime scene which could be used to link crimes to serial offenders. The aim of this work is to investigate to what extent it is possible to use geographic route estimations and behavioral data to detect serial offenders. Experiments were conducted using behavioral data from authentic burglary reports to investigate if it was possible to find crime routes with high similarity. Further, the use of burglary reports from serial offenders to investigate to what extent it was possible to detect serial offender crime routes. The result show that crime series with the same offender on average had a higher behavioral similarity than random crime series. Sets of crimes with high similarity, but without a known offender would be interesting for law enforcement to investigate further. The algorithm is also evaluated on 9 crime series containing a maximum of 20 crimes per series. The results suggest that it is possible to detect crime series with high similarity using analysis of both geographic routes and behavioral data recorded at crime scenes.
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基于路径估计和行为相似度的犯罪序列检测
大多数罪行是由少数罪犯犯下的。先前的研究已经为连环罪犯在犯罪现场留下行为痕迹的理论提供了一些支持,这些痕迹可以用来将犯罪与连环罪犯联系起来。这项工作的目的是调查在多大程度上可以使用地理路线估计和行为数据来检测连环罪犯。利用真实的入室盗窃报告中的行为数据进行实验,以调查是否有可能找到高度相似的犯罪路线。此外,利用惯犯的入室盗窃报告来调查在多大程度上可以发现惯犯的犯罪路线。结果表明,同一犯罪主体构成的犯罪系列的行为相似性高于随机犯罪系列。一系列高度相似的犯罪,但没有一个已知的罪犯,这将是执法部门进一步调查的有趣之处。该算法还对9个犯罪系列进行了评估,每个系列最多包含20个犯罪。结果表明,通过对犯罪现场记录的地理路线和行为数据进行分析,可以发现具有高度相似性的犯罪系列。
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