Machine Learning in Transaction Monitoring: The Prospect of xAI

Julie Gerlings, Ioanna D. Constantiou
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引用次数: 1

Abstract

Banks hold a societal responsibility and regulatory requirements to mitigate the risk of financial crimes. Risk mitigation primarily happens through monitoring customer activity through Transaction Monitoring (TM). Recently, Machine Learning (ML) has been proposed to identify suspicious customer behavior, which raises complex socio-technical implications around trust and explainability of ML models and their outputs. However, little research is available due to its sensitivity. We aim to fill this gap by presenting empirical research exploring how ML supported automation and augmentation affects the TM process and stakeholders' requirements for building eXplainable Artificial Intelligence (xAI). Our study finds that xAI requirements depend on the liable party in the TM process which changes depending on augmentation or automation of TM. Context-relatable explanations can provide much-needed support for auditing and may diminish bias in the investigator's judgement. These results suggest a use case-specific approach for xAI to adequately foster the adoption of ML in TM.
事务监控中的机器学习:xAI的前景
银行承担着社会责任和监管要求,以减轻金融犯罪的风险。风险缓解主要是通过事务监控(Transaction monitoring, TM)监控客户活动来实现的。最近,机器学习(ML)被提出用于识别可疑的客户行为,这引发了围绕ML模型及其输出的信任和可解释性的复杂社会技术影响。然而,由于其敏感性,研究很少。我们的目标是通过提出实证研究来填补这一空白,探索ML支持的自动化和增强如何影响TM过程和利益相关者对构建可解释的人工智能(xAI)的需求。我们的研究发现,xAI需求取决于TM过程中的责任方,而责任方的变化取决于TM的增强或自动化。与上下文相关的解释可以为审计提供急需的支持,并可能减少调查员判断中的偏见。这些结果为xAI提出了一种特定于用例的方法,以充分促进ML在TM中的采用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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