Early Prediction of Banking Closure Failures Using Machine Learning for Anomaly Detection
DOI:
https://doi.org/10.65405/.2025.811Keywords:
Banking Systems, Daily Closure, Machine Learning, Anomaly Detection, Synthetic Data, Random Forest, Isolation Forest.Abstract
Closing the banking system is one of the most crucial things that should be done in financial
institutions especially banks. This can happen daily, monthly, or yearly. When the bank follows a
proper routine every day, it helps maintain consistency in its operations, and it will also help
maintain the internal and external balance of the bank. The closing is stopped and delayed when any
mistake or unusual and suspicious transaction occurs. Thus, it adds stress, work, and effort. This
raises the dangers of doing business. Banks must close every day to deal with the large number of
transactions that happen during the day that the bank’s actual activities to directly find any
mistakes, suspicions, fraud attempts or theft. Unlike the shops or stores that are mostly closed for a
day in the month or a year, this is different. The research proposes a Machine Learning based
approach for the early identification of anomalies leading to daily closing failure. We used synthetic
data that acted like a real bank setting. The dataset used was open-source and available on Kaggle
as well. They used several models such as Random Forest, which is a supervised model, and
Isolation Forest, which is an unsupervised model The models were deployed and analyzed on
performance through metrics pertaining to machine learning such as recall, positive accuracy, F1-
Score, and ROC-AUC. The study showed the results of Random Forest model are highly accurate
for classifies data. The model called Isolation Forest was also quite capable of finding the
unexpected patterns. The applications of both models together could be beneficial in developing and
constructing a model for an early warning system which would reduce sudden closures and enhance
the role of digital transformation in the banking industry as a whole
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References
Farouk, A. (2025). AI and machine learning in financial closing: Opportunities and
challenges. Journal of Financial Technology, 12(3), 45–60.
Sebastian, L., & Sodhi, R. (2025). Artificial intelligence for automated bank
reconciliation. International Journal of Banking Systems, 18(2), 112–129.
Mokoena, T., Madonsela, S., & Ndlovu, P. (2025). An ensemble model for online
banking fraud detection using supervised and unsupervised learning. Journal of
Applied Machine Learning, 9(1), 77–94.
Herurkar, R., Kumar, P., & Sharma, V. (2024). Fin-Fed-OD: A federated learning
framework for anomaly detection in distributed financial systems. IEEE Transactions
on Knowledge and Data Engineering, 36(7), 1455–1469.
Bakumenko, Y., Zhang, H., & Li, X. (2024). Enhancing anomaly detection in
financial ledgers with large language model embeddings. ACM Transactions on
Information Systems, 42(4), 1–23.
Petropoulos, A., Siakoulis, V., Stavroulakis, E., & Vlachogiannakis, N. E. (2020).
Predicting bank insolvencies using machine learning techniques. International
Journal of Forecasting, 36(3), 1092-1113.
Shang, T., Samour, A., Abbas, J., Ali, M., & Tursoy, T. (2025). Impact of financial
inclusion, economic growth, natural resource rents, and natural energy use on carbon
emissions: the MMQR approach. Environment, Development and
Sustainability, 27(6), 14143-14173.
Chohan, M. A., Butt, S., Akbar, U., Bilal, M., Ramakrishnan, S., & Shahzad, M. F.
(2025). Connecting Stability, Finance, and Climate Resilience for a Sustainable
Tomorrow Towards Green Progress in ASEAN-5. In Securing Sustainable Futures
Through Blue and Green Economies (pp. 331-356). IGI Global Scientific Publishing.
Chatterjee, N., & Kundu, D. (2025). The Unsung Heroes of Rural Finance: Assessing
the Performance of Regional Rural Banks in India. Journal of Scholastic Engineering
Science and Management (JSESM), 4(1), 1-7.
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