Detection of money laundering groups using supervised learning in networks

نویسندگان

  • David Savage
  • Qingmai Wang
  • Pauline Lienhua Chou
  • Xiuzhen Zhang
  • Xinghuo Yu
چکیده

Money laundering is a major global problem, enabling criminal organisations to hide their ill-gotten gains and to finance further operations. Prevention of money laundering is seen as a high priority by many governments, however detection of money laundering without prior knowledge of predicate crimes remains a significant challenge. Previous detection systems have tended to focus on individuals, considering transaction histories and applying anomaly detection to identify suspicious behaviour. However, money laundering involves groups of collaborating individuals, and evidence of money laundering may only be apparent when the collective behaviour of these groups is considered. In this paper we describe a detection system that is capable of analysing group behaviour, using a combination of network analysis and supervised learning. This system is designed for real-world application and operates on networks consisting of millions of interacting parties. Evaluation of the system using real-world data indicates that suspicious activity is successfully detected. Importantly, the system exhibits a low rate of false positives, and is therefore suitable for use in a live intelligence environment.

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عنوان ژورنال:
  • CoRR

دوره abs/1608.00708  شماره 

صفحات  -

تاریخ انتشار 2016