Prospects of Artificial Intelligence and Machine Learning Application in Banking Risk Management

Author:

Milojević Nenad1,Redzepagic Srdjan2

Affiliation:

1. Mirabank a.d. Belgrade , Republic of Serbia

2. Université Côte d'Azur , Graduate School in Economics and Management , Nice , France

Abstract

Abstract Artificial intelligence and machine learning have increasing influence on the financial sector, but also on economy as a whole. The impact of artificial intelligence and machine learning on banking risk management has become particularly interesting after the global financial crisis. The research focus is on artificial intelligence and machine learning potential for further banking risk management improvement. The paper seeks to explore the possibility for successful implementation yet taking into account challenges and problems which might occur as well as potential solutions. Artificial intelligence and machine learning have potential to support the mitigation measures for the contemporary global economic and financial challenges, including those caused by the COVID-19 crisis. The main focus in this paper is on credit risk management, but also on analysing artificial intelligence and machine learning application in other risk management areas. It is concluded that a measured and well-prepared further application of artificial intelligence, machine learning, deep learning and big data analytics can have further positive impact, especially on the following risk management areas: credit, market, liquidity, operational risk, and other related areas.

Publisher

Walter de Gruyter GmbH

Subject

Strategy and Management,Economics and Econometrics,Finance

Reference24 articles.

1. 1. Addo, P.M., Guegan, D. and Hassani B. (2018). Credit Risk Analysis Using Machine and Deep Learning Models. Risks, 6: 38. https://doi.org/10.3390/risks6020038

2. 2. Aldasoro, I., Gambacorta, L., Giudici P. and Leach T. (2020). Operational and cyber risks in the financial sector. Bank for International Settlements, BIS Working Papers No 840, February 2020

3. 3. Adrian, T. (2018). Risk Management and Regulation. International Monetary Fund, Departmental Paper No. 18/13

4. 4. Basel Committee on Banking Supervision (2000). Principles for the Management of Credit Risk, June 2006, Bank for International Settlements.

5. 5. Basel Committee on Banking Supervision (2006). International Convergence of Capital Measurement and Capital Standards – A revised Framework, June 2006, Bank for International Settlements.

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