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NextGen AML: Distributed Deep Learning based Language Technologies to Augment Anti Money Laundering Investigation

机译:NextGen AML:基于深度学习的分布式语言技术可增强反洗钱调查

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Most of the current anti money laundering (AML) systems, using handcrafted rules, are heavily reliant on existing structured databases, which are not capable of effectively and efficiently identifying hidden and complex ML activities, especially those with dynamic and time-varying characteristics, resulting in a high percentage of false positives. Therefore, analysts are engaged for further investigation which significantly increases human capital cost and processing time. To alleviate these issues, this paper presents a novel framework for the next generation AML by applying and visualizing deep learning-driven natural language processing (NLP) technologies in a distributed and scalable manner to augment AML monitoring and investigation. The proposed distributed framework performs news and tweet sentiment analysis, entity recognition, relation extraction, entity linking and link analysis on different data sources (e.g. news articles and tweets) to provide additional evidence to human investigators for final decision-making. Each NLP module is evaluated on a task-specific data set, and the overall experiments are performed on synthetic and real-world datasets. Feedback from AML practitioners suggests that our system can reduce approximately 30% time and cost compared to their previous manual approaches of AML investigation.
机译:当前,大多数使用手工规则的反洗钱(AML)系统都严重依赖现有的结构化数据库,这些结构化数据库无法有效地识别隐藏和复杂的ML活动,尤其是那些具有动态和时变特征的活动。误报率很高。因此,分析人员需要进行进一步的调查,这将大大增加人力资本成本和处理时间。为了缓解这些问题,本文通过以分布式和可扩展的方式应用和可视化深度学习驱动的自然语言处理(NLP)技术并增强AML监视和调查,为下一代AML提供了一个新颖的框架。拟议的分布式框架对不同数据源(例如新闻文章和推文)执行新闻和推文情感分析,实体识别,关系提取,实体链接和链接分析,以为调查人员提供最终决策的更多证据。每个NLP模块都在特定于任务的数据集上进行评估,整体实验在合成数据集和真实数据集上进行。反洗钱从业人员的反馈表明,与他们以前的手工进行反洗钱方法相比,我们的系统可以减少大约30%的时间和成本。

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