Assessing Machine Learning Techniques for Predicting Banking Crises in India

Author:

Puli Sreenivasulu1ORCID,Thota Nagaraju1ORCID,Subrahmanyam A. C. V.1

Affiliation:

1. Department of Economics and Finance, Birla Institute of Technology & Science, Hyderabad 500078, India

Abstract

The historical prevalence of banking crises and their profound impact on global economies underscores the imperative for policy makers to refine their crisis forecasting frameworks. Against this backdrop, the present study endeavors to predict potential banking crises in India by leveraging a spectrum of artificial intelligence and machine learning techniques (AI-ML). These techniques encompass logistic regression, random forest, naïve Bayes, gradient boosting, support vector machine, neural networks, K-nearest neighbors, and decision trees. Initially, a banking fragility index was constructed utilizing monthly banking data spanning 2002 to 2023, demarcating the periods of crisis and stability. Subsequently, an extensive array of early warning indicators (EWIs) encompassing asset prices, macroeconomic factors, external influences, and credit-related variables were employed to forecast crisis periods. Our findings reveal that AI-ML models exhibit reasonable accuracy in predicting banking crises. Moreover, advanced model performance metrics highlight neural networks and random forest models as particularly effective in crisis prediction, surpassing other methodologies. Notably, among the EWIs, variables related to credit, interest rates, and liquidity emerge as possessing relatively higher information value in discerning fragilities within the Indian banking system. Importantly, the methodological framework presented herein can be extrapolated for banking crisis prediction in other economies.

Publisher

MDPI AG

Reference69 articles.

1. Banking fragility sector index and determinants: A comparison between local based and foreign based commercial banks in Malaysia;Ahmad;International Journal of Business and Administrative Studies,2015

2. An empirical comparison of conventional techniques, neural networks and the three-stage hybrid Adaptive Neuro Fuzzy Inference System (ANFIS) model for credit scoring analysis: The case of Turkish credit card data;Akkoc;European Journal of Operational Research,2012

3. Aldasoro, Iñaki, Borio, Claudio EV, and Drehmann, Mathias (2018). Early warning indicators of banking crises: Expanding the family. BIS Quarterly Review, Available online: https://papers.ssrn.com/sol3/papers.cfm?abstract_id=3139160.

4. Quasi real time early warning indicators for costly asset price boom/bust cycles: A role for global liquidity;Alessi;European Journal of Political Economy,2011

5. Financial fragility, liquidity, and asset prices;Allen;Journal of the European Economic Association,2004

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