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Machine learning techniques for anti-money laundering (AML) solutions in suspicious transaction detection: a review

机译:可疑交易检测中的反洗钱(AML)解决方案的机器学习技术:审查

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摘要

Money laundering has been affecting the global economy for many years. Large sums of money are laundered every year, posing a threat to the global economy and its security. Money laundering encompasses illegal activities that are used to make illegally acquired funds appear legal and legitimate. This paper aims to provide a comprehensive survey of machine learning algorithms and methods applied to detect suspicious transactions. In particular, solutions of anti-money laundering typologies, link analysis, behavioural modelling, risk scoring, anomaly detection, and geographic capability have been identified and analysed. Key steps of data preparation, data transformation, and data analytics techniques have been discussed; existing machine learning algorithms and methods described in the literature have been categorised, summarised, and compared. Finally, what techniques were lacking or under-addressed in the existing research has been elaborated with the purpose of pinpointing future research directions.
机译:洗钱一直影响全球经济多年。每年都会洗涤大笔资金,对全球经济及其安全构成威胁。洗钱包括用于使非法获得资金的非法活动表现出合法和合法性。本文旨在为检测可疑交易提供综合对机器学习算法和方法的全面调查。特别是,已经确定并分析了反洗钱类型,链接分析,行为建模,风险评分,异常检测和地理能力的解决方案。已经讨论了数据准备,数据转换和数据分析技术的关键步骤;文献中描述的现有机器学习算法和方法已被分类,总结和比较。最后,在现有的研究中缺乏或未解决的技术已经详细阐述,目的是精确定位未来的研究方向。

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