Money laundering is the process where criminals use financial services to move massive amounts of illegal money to untraceable destinations and integrate them into legitimate financial systems. It is very crucial to identify such activities accurately and reliably in order to enforce an anti-money laundering (AML). Despite tremendous efforts to AML only a tiny fraction of illicit activities are prevented. From a given graph of money transfers between accounts of a bank, existing approaches attempted to detect money laundering. In particular, some approaches employ structural and behavioural dynamics of dense subgraph detection thereby not taking into consideration that money laundering involves high-volume flows of funds through chains of bank accounts. Some approaches model the transactions in the form of multipartite graphs to detect the complete flow of money from source to destination. However, existing approaches yield lower detection accuracy, making them less reliable. In this paper, we employ semi-supervised graph learning techniques on graphs of financial transactions in order to identify nodes involved in potential money laundering. Experimental results suggest that our approach can sport money laundering from real and synthetic transaction graphs.
翻译:洗钱是犯罪分子利用金融服务将大量非法资金转移到无法追查的目的地并将其纳入合法金融系统的过程,为了执行反洗钱措施,必须准确和可靠地查明此类活动,这非常重要。尽管在反洗钱方面作出了巨大努力,但防止的非法活动只有很小一部分。从银行账户之间资金转移的某一图表中,现有办法试图侦查洗钱活动。特别是,有些办法采用密集分子探测的结构和行为动态,从而不考虑洗钱涉及通过银行账户链流出大量资金的问题。一些办法以多面图的形式模拟交易,以侦查从来源到目的地的资金的完整流动。不过,现有办法的检测准确性较低,使其不那么可靠。在本文件中,我们在金融交易图表上采用半封闭的图表学习技术,以便查明潜在的洗钱活动。实验结果表明,我们的办法可以利用真实和合成交易图表进行洗钱活动。</s>