Identifying the risk culture of banks using machine learning

IF 1.8 Q2 BUSINESS, FINANCE International Journal of Managerial Finance Pub Date : 2023-06-15 DOI:10.1108/ijmf-09-2022-0422
Abena Owusu, Aparna Gupta
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引用次数: 1

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.
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利用机器学习识别银行的风险文化
虽然风险文化是有效风险管理的关键决定因素,但由于文化的抽象概念,确定公司的风险文化可能具有挑战性。本文提出了一种新的方法,该方法使用无监督机器学习技术来识别评估和区分不同形式的风险文化所需的重要特征。为了将银行10K报告样本中的非结构化文本转换为结构化数据,我们构建了一个用于文本挖掘的二维字典,以捕获风险文化特征和银行对风险文化特征的态度。在使用K-means无监督学习将报告聚类到不同的风险文化组之前,应用主成分分析(PCA)约简技术提取定义风险文化的重要特征。PCA发现风险文化特征中的不确定性、诉讼和约束情绪在定义银行风险文化方面具有重要意义。对PCA因子的聚类分析提出了三个不同的风险文化聚类:好、公平和差。与监管预期一致,银行良好或公平的风险文化的特点是高利润率、银行稳定性、较低的违约风险和良好的治理。文化和风险管理之间的关系很难研究,因为很难从混乱和多样化的传统数据来源来衡量文化。本研究使用无监督机器学习方法更好地理解了风险文化。
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来源期刊
CiteScore
4.10
自引率
0.00%
发文量
47
期刊介绍: Treasury and Financial Risk Management ■Redefining, measuring and identifying new methods to manage risk for financing decisions ■The role, costs and benefits of insurance and hedging financing decisions ■The role of rating agencies in managerial decisions Investment and Financing Decision Making ■The uses and applications of forecasting to examine financing decisions measurement and comparisons of various financing options ■The public versus private financing decision ■The decision of where to be publicly traded - including comparisons of market structures and exchanges ■Short term versus long term portfolio management - choice of securities (debt vs equity, convertible vs non-convertible)
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