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

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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.

论文关键词:Link analysis,Shortest-path algorithm,Concept space,Law enforcement,Crime investigation,Organized crime

论文评审过程:Received 1 January 2003, Accepted 21 July 2003, Available online 7 October 2003.

论文官网地址:https://doi.org/10.1016/S0167-9236(03)00117-9