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Identifying the risk culture of banks using machine learning

Abena Owusu (Feliciano School of Business, Montclair State University, Montclair, New Jersey, USA)
Aparna Gupta (Lally School of Management, Rensselaer Polytechnic Institute, Troy, New York, USA)

International Journal of Managerial Finance

ISSN: 1743-9132

Article publication date: 15 June 2023

Issue publication date: 7 March 2024

217

Abstract

Purpose

Although risk culture is a key determinant for an effective risk management, identifying the risk culture of a firm can be challenging due to the abstract concept of culture. This paper proposes a novel approach that uses unsupervised machine learning techniques to identify significant features needed to assess and differentiate between different forms of risk culture.

Design/methodology/approach

To convert the unstructured text in our sample of banks' 10K reports into structured data, a two-dimensional dictionary for text mining is built to capture risk culture characteristics and the bank's attitude towards the risk culture characteristics. A principal component analysis (PCA) reduction technique is applied to extract the significant features that define risk culture, before using a K-means unsupervised learning to cluster the reports into distinct risk culture groups.

Findings

The PCA identifies uncertainty, litigious and constraining sentiments among risk culture features to be significant in defining the risk culture of banks. Cluster analysis on the PCA factors proposes three distinct risk culture clusters: good, fair and poor. Consistent with regulatory expectations, a good or fair risk culture in banks is characterized by high profitability ratios, bank stability, lower default risk and good governance.

Originality/value

The relationship between culture and risk management can be difficult to study given that it is hard to measure culture from traditional data sources that are messy and diverse. This study offers a better understanding of risk culture using an unsupervised machine learning approach.

Keywords

Acknowledgements

1. “A preprint version of this paper appeared as “Identifying the Risk Culture of Banks Using Machine Learning” and has been posted on SSRN repository”.

2. “A preprint version of this paper appeared as “Identifying the Risk Culture of Banks Using Machine Learning” and has been posted on ResearchGate repository”.

The authors acknowledge the contribution of Haochen Liu to initial work on this project through the GARP Master’s Research Fellowship. The authors thank conference organizers of the 17th Finance, Risk and Accounting Perspectives (FRAP) conference for selecting this paper for best conference paper award. The authors thank Laura Starks and the participants of the 2020 Diversity Emerging Scholars Initiative (DESI) workshop at the Financial Management Association (FMA) conference. The authors also thank conference and seminar participants at the 17th FRAP conference, the 2018 International Risk Management Conference (IRMC), the 2018 European Financial Management Association (EFMA) Conference, the 2018 INFORMS Annual Meeting, Federal Deposit Insurance Corporation (FDIC), the Securities and Exchange Commission (SEC) and the Lally School of Management Research Symposium at Rensselaer Polytechnic Institute, for their valuable feedback on this research.

Citation

Owusu, A. and Gupta, A. (2024), "Identifying the risk culture of banks using machine learning", International Journal of Managerial Finance, Vol. 20 No. 2, pp. 377-405. https://doi.org/10.1108/IJMF-09-2022-0422

Publisher

:

Emerald Publishing Limited

Copyright © 2023, Emerald Publishing Limited

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