论文标题
反洗钱的基于时频的可疑活动检测
A Time-Frequency based Suspicious Activity Detection for Anti-Money Laundering
论文作者
论文摘要
洗钱是罪犯使用的至关重要的机制,将犯罪收益注入金融体系。与洗钱有关的可疑活动发现的主要责任是金融机构。这些机构中的大多数当前系统都是基于规则和无效的。可用的基于数据科学的反洗钱(AML)模型,以取代现有的基于规则的系统在客户关系管理(CRM)特征和交易行为的时间特征上工作。但是,由于成千上万的可能功能,在功能工程方面的准确性和问题仍然存在挑战。 为了改善AML系统可疑交易监控系统的检测性能,在本文中,我们介绍了一个基于时间频率分析的新型功能,该功能利用了金融交易的2D表示。随机森林被用作机器学习方法,并采用了模拟退火来进行高参数调整。设计算法在实际银行数据上进行了测试,证明了结果在实际相关环境中的功效。结果表明,可疑和非舒适实体的时频特性显着区别,这将大大提高基于数据科学的交易监控系统的精度,仅查看时间序列交易和CRM功能。
Money laundering is the crucial mechanism utilized by criminals to inject proceeds of crime to the financial system. The primary responsibility of the detection of suspicious activity related to money laundering is with the financial institutions. Most of the current systems in these institutions are rule-based and ineffective. The available data science-based anti-money laundering (AML) models in order to replace the existing rule-based systems work on customer relationship management (CRM) features and time characteristics of transaction behaviour. However, there is still a challenge on accuracy and problems around feature engineering due to thousands of possible features. Aiming to improve the detection performance of suspicious transaction monitoring systems for AML systems, in this article, we introduce a novel feature set based on time-frequency analysis, that makes use of 2-D representations of financial transactions. Random forest is utilized as a machine learning method, and simulated annealing is adopted for hyperparameter tuning. The designed algorithm is tested on real banking data, proving the efficacy of the results in practically relevant environments. It is shown that the time-frequency characteristics of suspicious and non-suspicious entities differentiate significantly, which would substantially improve the precision of data science-based transaction monitoring systems looking at only time-series transaction and CRM features.