Money laundering transaction detection with classification tree models

Paolo Giudici, Giulia Marini
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Abstract

The detection of money laundering is a very important problem, especially in the financial sector. We propose a mathematical specification of the problem in terms of a classification tree model that ”automates” expert based manual decisions. We operationally validate the model on a concrete application that originates from a large Italian bank. The application of the model to the data shows a good predictive accuracy and, even more importantly, the reduction of false positives, with respect to the ”manual” expert based activity. From an interpretational viewpoint, while some drivers of suspicious laundering activity are in line with the daily business practices of the bank’s anti money laundering operations, some others are new discoveries.
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用分类树模型检测洗钱交易
洗钱的侦查是一个非常重要的问题,特别是在金融领域。我们根据分类树模型提出了问题的数学规范,该模型“自动化”了基于专家的人工决策。我们在来自一家大型意大利银行的具体应用程序上对模型进行操作验证。该模型对数据的应用显示出良好的预测准确性,更重要的是,相对于“手动”专家活动,减少了误报。从解释的角度来看,虽然可疑洗钱活动的一些驱动因素符合银行反洗钱业务的日常业务实践,但其他一些是新发现。
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