Mining top-k and bottom-k correlative crime patterns through graph representations

Peter Phillips, Ickjai Lee
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引用次数: 12

Abstract

Crime activities are geospatial phenomena and as such are geospatially, thematically and temporally correlated. Thus, crime datasets must be interpreted and analyzed in conjunction with various factors that can contribute to the formulation of crime. Discovering these correlations allows a deeper insight into the complex nature of criminal behavior. We introduce a graph based dataset representation that allows us to mine a set of datasets for correlation. We demonstrate our approach with real crime datasets and provide a comparison with other techniques.
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通过图表示挖掘top-k和bottom-k相关犯罪模式
犯罪活动是地理空间现象,因此在地理空间、主题和时间上是相关的。因此,犯罪数据集必须与可能导致犯罪形成的各种因素结合起来进行解释和分析。发现这些相关性可以让我们更深入地了解犯罪行为的复杂本质。我们引入了一个基于图的数据集表示,它允许我们挖掘一组数据集的相关性。我们用真实的犯罪数据集展示了我们的方法,并与其他技术进行了比较。
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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