Authors
Mohammad A Tayebi, Mohsen Jamali, Martin Ester, Uwe Glässer, Richard Frank
Publication date
2011/10/23
Book
Proceedings of the fifth ACM conference on Recommender systems
Pages
173-180
Description
Law enforcement and intelligence agencies have long realized that analysis of co-offending networks, networks of offenders who have committed crimes together, is invaluable for crime investigation, crime reduction and prevention. Investigating crime can be a challenging and difficult task, especially in cases with many potential suspects and inconsistent witness accounts or inconsistencies between witness accounts and physical evidence. We present here a novel approach to crime suspect recommendation based on partial knowledge of offenders involved in a crime incident and a known co-offending network. To solve this problem, we propose a random walk based method for recommending the top-K potential suspects. By evaluating the proposed method on a large crime dataset for the Province of British Columbia, Canada, we show experimentally that this method outperforms baseline random walk and …
Total citations
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Scholar articles
MA Tayebi, M Jamali, M Ester, U Glässer, R Frank - Proceedings of the fifth ACM conference on …, 2011