TL;DR
This paper introduces a privacy-preserving, multi-institution anti-money laundering algorithm that effectively detects cross-institution laundering activities using a large real-world dataset and synthetic data for efficiency validation.
Contribution
It presents the first algorithm enabling collaborative AML across multiple institutions while safeguarding data privacy, supported by a large-scale real-world dataset and efficient performance.
Findings
Effectively detects cross-institution laundering groups
Operates efficiently on large-scale datasets
Demonstrates high accuracy in real-world and synthetic data
Abstract
Money laundering is the process that intends to legalize the income derived from illicit activities, thus facilitating their entry into the monetary flow of the economy without jeopardizing their source. It is crucial to identify such activities accurately and reliably in order to enforce anti-money laundering (AML). Despite considerable efforts to AML, a large number of such activities still go undetected. Rule-based methods were first introduced and are still widely used in current detection systems. With the rise of machine learning, graph-based learning methods have gained prominence in detecting illicit accounts through the analysis of money transfer graphs. Nevertheless, these methods generally assume that the transaction graph is centralized, whereas in practice, money laundering activities usually span multiple financial institutions. Due to regulatory, legal, commercial, and…
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