利用基于网络的算法加强反洗钱工作

Anthony Bonato, Juan Sebastian Chavez Palan, Adam Szava
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引用次数: 0

摘要

全球银行系统在反洗钱方面面临着越来越多的挑战,需要采用先进的方法来检测可疑交易。反洗钱(或 AML)方法通常依赖于预先定义的阈值和使用标记交易数据的机器学习算法,这受到现有数据集的可用性和准确性的限制。我们的方法利用美国拉博银行(Rabobank U.A.)的匿名交易数据集,将卢瓦纳算法(Louvainalgorithm)的群体检测和小周期检测结合起来,以识别低于监管报告阈值的可疑交易模式。我们的方法成功地识别了可能预示着洗钱分层步骤的交易循环,为金融机构加强反洗钱工作提供了有价值的工具。研究结果表明,我们的算法在准确识别可能存在的非法活动方面非常有效,这些非法活动躲过了当前的检测方法。
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Enhancing Anti-Money Laundering Efforts with Network-Based Algorithms
The global banking system has faced increasing challenges in combating money laundering, necessitating advanced methods for detecting suspicious transactions. Anti-money laundering (or AML) approaches have often relied on predefined thresholds and machine learning algorithms using flagged transaction data, which are limited by the availability and accuracy of existing datasets. In this paper, we introduce a novel algorithm that leverages network analysis to detect potential money laundering activities within large-scale transaction data. Utilizing an anonymized transactional dataset from Co\"operatieve Rabobank U.A., our method combines community detection via the Louvain algorithm and small cycle detection to identify suspicious transaction patterns below the regulatory reporting thresholds. Our approach successfully identifies cycles of transactions that may indicate layering steps in money laundering, providing a valuable tool for financial institutions to enhance their AML efforts. The results suggest the efficacy of our algorithm in pinpointing potentially illicit activities that evade current detection methods.
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