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Leveraging machine learning in the global fight against money laundering and terrorism financing: An affordances perspective

机译:利用机器学习在全球对抗洗钱和恐怖主义融资方面:带来的积极观点

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摘要

Financial services organisations facilitate the movement of money worldwide, and keep records of their clients' identity and financial behaviour. As such, they have been enlisted by governments worldwide to assist with the detection and prevention of money laundering, which is a key tool in the fight to reduce crime and create sustainable economic development, corresponding to Goal 16 of the United Nations Sustainable Development Goals. In this paper, we investigate how the technical and contextual affordances of machine learning algorithms may enable these organisations to accomplish that task. We find that, due to the unavailability of high-quality, large training datasets regarding money laundering methods, there is limited scope for using supervised machine learning. Conversely, it is possible to use reinforced machine learning and, to an extent, unsupervised learning, although only to model unusual financial behaviour, not actual money laundering.
机译:金融服务组织促进全球金钱的流动,并记录客户的身份和金融行为。 因此,他们已由全球各国政府招募,协助检测和预防洗钱,这是减少犯罪并创造可持续经济发展的关键工具,相当于联合国可持续发展目标的目标16。 在本文中,我们调查了机器学习算法的技术和上下文可供性如何使这些组织能够实现该任务。 我们发现,由于高质量,大型训练数据集的不可用,有资金洗钱方法,使用监督机器学习的范围有限。 相反,可以使用加强机器学习,并且在某种程度上,无监督的学习,虽然只是模拟不寻常的金融行为,而不是实际洗钱。

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