LaundroGraph: Self-Supervised Graph Representation Learning for Anti-Money Laundering

Mário Cardoso, Pedro Saleiro, P. Bizarro
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引用次数: 5

Abstract

Anti-money laundering (AML) regulations mandate financial institutions to deploy AML systems based on a set of rules that, when triggered, form the basis of a suspicious alert to be assessed by human analysts. Reviewing these cases is a cumbersome and complex task that requires analysts to navigate a large network of financial interactions to validate suspicious movements. Furthermore, these systems have very high false positive rates (estimated to be over 95%). The scarcity of labels hinders the use of alternative systems based on supervised learning, reducing their applicability in real-world applications. In this work we present LaundroGraph, a novel self-supervised graph representation learning approach to encode banking customers and financial transactions into meaningful representations. These representations are used to provide insights to assist the AML reviewing process, such as identifying anomalous movements for a given customer. LaundroGraph represents the underlying network of financial interactions as a customer-transaction bipartite graph and trains a graph neural network on a fully self-supervised link prediction task. We empirically demonstrate that our approach outperforms other strong baselines on self-supervised link prediction using a real-world dataset, improving the best non-graph baseline by 12 p.p. of AUC. The goal is to increase the efficiency of the reviewing process by supplying these AI-powered insights to the analysts upon review. To the best of our knowledge, this is the first fully self-supervised system within the context of AML detection.
LaundroGraph:反洗钱的自监督图表示学习
反洗钱(AML)法规要求金融机构根据一套规则部署反洗钱系统,这些规则在触发时形成可疑警报的基础,供人类分析师评估。审查这些案例是一项繁琐而复杂的任务,需要分析师在庞大的金融互动网络中导航,以验证可疑的活动。此外,这些系统的假阳性率非常高(估计超过95%)。标签的稀缺性阻碍了基于监督学习的替代系统的使用,降低了它们在现实应用中的适用性。在这项工作中,我们提出了一种新的自监督图表示学习方法LaundroGraph,将银行客户和金融交易编码为有意义的表示。这些表示用于提供见解,以协助AML审查流程,例如识别给定客户的异常活动。LaundroGraph将金融交互的底层网络表示为客户-交易二部图,并在一个完全自监督的链接预测任务上训练一个图神经网络。我们通过经验证明,我们的方法在使用真实数据集的自监督链接预测上优于其他强基线,将最佳非图基线的AUC提高了12个百分点。目标是通过在审查时向分析师提供这些ai驱动的见解来提高审查过程的效率。据我们所知,这是在AML检测背景下的第一个完全自我监督的系统。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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