银行风险管理中的机器学习:描绘十年的演变

Valentin Lennart Heß, Bruno Damásio
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引用次数: 0

摘要

与风险管理过程相反,银行风险管理所使用的技术是不断发展的。有必要对这些市场和技术驱动的变化作出适当的反应。需要创新的方法来克服传统方法的局限性。机器学习算法适用于处理银行面临的各种风险类型。学术文献主要关注机器学习在信用风险管理中的应用。本文将讨论市场、运营、流动性和其他风险类型,目的是研究ML算法如何预测、评估和减轻这些风险,并确定它们的优势和挑战。本文系统地回顾了最近的46项研究,并强调了机器学习在加强风险管理策略方面的作用。本文揭示了ML在市场和操作风险的背景下得到了充分的覆盖。人工神经网络和其他算法的学习能力和预测能力在风险管理方面很有前景。我们的研究结果简要概述了当前ML在银行业多种风险类型中的应用,确定了研究差距,突出了机遇和挑战,并为进一步研究提供了可操作的方向。通过重点概述机器学习在银行风险管理中不断扩大的作用,我们强调了增强银行战略和实践稳健性的潜力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Machine learning in banking risk management: Mapping a decade of evolution
The techniques used in banks' risk management are evolving as opposed to the process of risk management. It is necessary to respond to these market- and technology-driven changes appropriately. Innovative approaches are needed to overcome the limitations of traditional methods. Machine learning (ML) algorithms are suitable for dealing with the various risk types banks face. Academic literature focuses on applying ML in credit risk management. This article addresses market, operational, liquidity, and other risk types, with the objective to examine how ML algorithms predict, assess, and mitigate these risks and identify both their advantages and challenges. This article systematically reviews 46 recent studies and highlights the expanding role of ML in enhancing risk management strategies. The article has revealed that ML is adequately covered in the context of market and operational risk. The learning ability and predictive capabilities of artificial neural networks and other algorithms are promising for risk management. Our findings offer a concise overview of current ML applications for multiple risk types in banking, identifying research gaps, highlighting opportunities and challenges and providing actionable directions for further studies. By providing a focused overview of the expanding role of ML in banking risk management, we underscore the potential to strengthen the robustness of banks’ strategies and practices.
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CiteScore
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