Machine learning in banking risk management: Mapping a decade of evolution

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Abstract

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.
Original languageEnglish
Article number100324
Pages (from-to)1-17
Number of pages17
JournalInternational Journal of Information Management Data Insights
Volume5
Issue number1
Early online date30 Jan 2025
DOIs
Publication statusPublished - Jun 2025

Keywords

  • Algorithm
  • Artificial intelligence
  • Bank
  • Machine learning
  • Risk management

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