Major Determinants of Bank Profitability in India: A Machine Learning Approach

IF 2.3 Q3 BUSINESS
P. Rai, B. B. Mohapatra, A. J. Meitei, Vanita Jain
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Abstract

From reforms and fin-tech revolutions to macro-economic shocks, the Indian banking sector has witnessed rapid changes over the last two decades, which has significant implications for banks’ profitability. Viewing bank profitability from three different dimensions, Net Interest Margins (NIM), Return on Assets (RoA) and Return on Equity (RoE), this study has explored the key determinants with the help of machine learning algorithms. It has used a pooled data set of domestic and commercial banks covering 2005–2021. As a dependent variable, profitability by each measure (NIM, RoA and RoE) is reclassified into three categories, above average, average and below average, based on their quartiles. Twenty-one explanatory variables comprising bank-specific, macroeconomic and policy variables are chosen after due validation using feature selection methodology and multicollinearity check. The random forest (RF) classification algorithm is executed using the CARET package in R. The results obtained from feature selection are corroborated with the RF classification findings. The results are robust and give clear-cut visibility of unique and common factors influencing three profitability measures at varying levels. The classification estimates suggest that the bank-specific variables are major determinants of NIM, while macroeconomic and policy variables are the key determinants of RoA and RoE. Further, the results also suggest that the ratio of non-performing assets to total assets and business per employee are two such bank-specific determinants that play an important role in all three dimensions of profitability. Thus, recapitalization and automation will play an important role in bank profitability.
印度银行盈利能力的主要决定因素:机器学习方法
从改革和金融科技革命到宏观经济冲击,印度银行业在过去二十年中经历了快速变化,这对银行的盈利能力产生了重大影响。本研究从净息差(NIM)、资产回报率(RoA)和股本回报率(RoE)三个不同的维度考察银行盈利能力,并在机器学习算法的帮助下探索了关键决定因素。它使用了2005年至2021年期间国内和商业银行的汇总数据集。作为一个因变量,每个衡量指标(NIM, RoA和RoE)的盈利能力根据其四分位数重新划分为高于平均水平,平均水平和低于平均水平三类。在使用特征选择方法和多重共线性检查进行适当验证后,选择了21个解释变量,包括银行特定的,宏观经济和政策变量。随机森林(RF)分类算法使用r中的CARET包执行,从特征选择中获得的结果与RF分类结果一致。结果是稳健的,并给出了在不同水平上影响三个盈利能力措施的独特和共同因素的清晰可见性。分类估计表明,银行特定变量是NIM的主要决定因素,而宏观经济和政策变量是RoA和RoE的关键决定因素。此外,研究结果还表明,不良资产占总资产的比例和每个员工的业务是两个银行特定的决定因素,在盈利能力的所有三个维度中都起着重要作用。因此,资本重组和自动化将在银行盈利能力中发挥重要作用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
CiteScore
7.10
自引率
12.50%
发文量
107
期刊介绍: Global Business Review is designed to be a forum for the wider dissemination of current management and business practice and research drawn from around the globe but with an emphasis on Asian and Indian perspectives. An important feature is its cross-cultural and comparative approach. Multidisciplinary in nature and with a strong practical orientation, this refereed journal publishes surveys relating to and report significant developments in management practice drawn from business/commerce, the public and the private sector, and non-profit organisations. The journal also publishes articles which provide practical insights on doing business in India/Asia from local and global and macro and micro perspectives.
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