Machine Learning in Banking Risk Management: A Literature Review

There is an increasing influence of machine learning in business applications, with many solutions already implemented and many more being explored. Since the global financial crisis, risk management in banks has gained more prominence, and there has been a constant focus around how risks are being...

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Bibliographic Details
Main Authors: Martin Leo, Suneel Sharma, K. Maddulety
Format: Article
Language:English
Published: MDPI AG 2019-03-01
Series:Risks
Subjects:
Online Access:http://www.mdpi.com/2227-9091/7/1/29
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spelling doaj-77af7f634f5a4329bb3586770a5729392020-11-25T00:03:38ZengMDPI AGRisks2227-90912019-03-01712910.3390/risks7010029risks7010029Machine Learning in Banking Risk Management: A Literature ReviewMartin Leo0Suneel Sharma1K. Maddulety2SP Jain School of Global Management, Sydney 2127, AustraliaSP Jain School of Global Management, Sydney 2127, AustraliaSP Jain School of Global Management, Sydney 2127, AustraliaThere is an increasing influence of machine learning in business applications, with many solutions already implemented and many more being explored. Since the global financial crisis, risk management in banks has gained more prominence, and there has been a constant focus around how risks are being detected, measured, reported and managed. Considerable research in academia and industry has focused on the developments in banking and risk management and the current and emerging challenges. This paper, through a review of the available literature seeks to analyse and evaluate machine-learning techniques that have been researched in the context of banking risk management, and to identify areas or problems in risk management that have been inadequately explored and are potential areas for further research. The review has shown that the application of machine learning in the management of banking risks such as credit risk, market risk, operational risk and liquidity risk has been explored; however, it doesn’t appear commensurate with the current industry level of focus on both risk management and machine learning. A large number of areas remain in bank risk management that could significantly benefit from the study of how machine learning can be applied to address specific problems.http://www.mdpi.com/2227-9091/7/1/29risk managementbankmachine learningcredit scoringfraud
collection DOAJ
language English
format Article
sources DOAJ
author Martin Leo
Suneel Sharma
K. Maddulety
spellingShingle Martin Leo
Suneel Sharma
K. Maddulety
Machine Learning in Banking Risk Management: A Literature Review
Risks
risk management
bank
machine learning
credit scoring
fraud
author_facet Martin Leo
Suneel Sharma
K. Maddulety
author_sort Martin Leo
title Machine Learning in Banking Risk Management: A Literature Review
title_short Machine Learning in Banking Risk Management: A Literature Review
title_full Machine Learning in Banking Risk Management: A Literature Review
title_fullStr Machine Learning in Banking Risk Management: A Literature Review
title_full_unstemmed Machine Learning in Banking Risk Management: A Literature Review
title_sort machine learning in banking risk management: a literature review
publisher MDPI AG
series Risks
issn 2227-9091
publishDate 2019-03-01
description There is an increasing influence of machine learning in business applications, with many solutions already implemented and many more being explored. Since the global financial crisis, risk management in banks has gained more prominence, and there has been a constant focus around how risks are being detected, measured, reported and managed. Considerable research in academia and industry has focused on the developments in banking and risk management and the current and emerging challenges. This paper, through a review of the available literature seeks to analyse and evaluate machine-learning techniques that have been researched in the context of banking risk management, and to identify areas or problems in risk management that have been inadequately explored and are potential areas for further research. The review has shown that the application of machine learning in the management of banking risks such as credit risk, market risk, operational risk and liquidity risk has been explored; however, it doesn’t appear commensurate with the current industry level of focus on both risk management and machine learning. A large number of areas remain in bank risk management that could significantly benefit from the study of how machine learning can be applied to address specific problems.
topic risk management
bank
machine learning
credit scoring
fraud
url http://www.mdpi.com/2227-9091/7/1/29
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