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Fighting organized crimes: using shortest-path algorithms to identify associations in criminal networks

机译:打击有组织犯罪:使用最短路径算法识别犯罪网络中的关联

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摘要

Effective and efficient link analysis techniques are needed to help law enforcement and intelligence agencies fight organized crimes such as narcotics violation, terrorism, and kidnapping. In this paper, we propose a link analysis technique that uses shortest-path algorithms, priority-first-search (PFS) and two-tree PFS, to identify the strongest association paths between entities in a criminal network. To evaluate effectiveness, we compared the PFS algorithms with crime investigators' typical association-search approach, as represented by a modified breadth-first-search (BFS). Our domain expert considered the association paths identified by PFS algorithms to be useful about 70% of the time, whereas the modified BFS algorithm's precision rates were only 30% for a kidnapping network and 16.7% for a narcotics network. Efficiency of the two-tree PFS was better for a small, dense kidnapping network, and the PFS was better for the large, sparse narcotics network.
机译:需要有效和高效的链接分析技术来帮助执法和情报机构打击有组织的犯罪,例如违反麻醉品,恐怖主义和绑架行为。在本文中,我们提出了一种链接分析技术,该技术使用最短路径算法,优先级优先搜索(PFS)和两树PFS来识别犯罪网络中实体之间最强的关联路径。为了评估有效性,我们将PFS算法与犯罪调查人员的典型关联搜索方法进行了比较,以改进的广度优先搜索(BFS)为代表。我们的领域专家认为,由PFS算法确定的关联路径在大约70%的时间内都是有用的,而对于绑架网络而言,修改后的BFS算法的准确率仅为30%,对于麻醉品网络而言,其准确率仅为16.7%。对于小型,密集的绑架网络,两树PFS的效率更好,而对于大型,稀疏的麻醉品网络,PFS的效率更高。

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