- Khoshhaikel, et al., Identification of barriers to the development of electronic banking. Business Intelligence Management Studies, 2016. 4(16): p. 123-145..
- Gholamian, Mozafari, and Azimeh, Predicting the value of new bank customers based on the R model. F. M using an improved decision tree to reduce the maximum memory required.
- Mittal, A., et al. A study on credit risk assessment in the banking sector using data mining techniques. In 2018 International Conference on Advanced Computation and Telecommunication (ICACAT). 2018. IEEE.
- Mandala, I.G.N.N., C.B. Nawangpalupi, and F.R. Praktikto, Assessing credit risk: An application of data mining in a rural bank. Procedia Economics and Finance, 2012. 4: p. 406-412.
- Thomas, L.C., A survey of credit and behavioural scoring: forecasting financial risk of lending to consumers. International journal of forecasting, 2000. 16(2): p. 149-172.
- Sadatrasoul, S.M., et al., Credit scoring in banks and financial institutions via data mining techniques: A literature review. Journal of AI and Data Mining, 2013. 1(2): p. 119-129.
- Elah, T.F. and A.N. Majid, The role of the banking system's payment credits and the government's budget in the formation of gross domestic fixed capital. 2005.
- Salehi and K. Katoli, choosing the optimal features in order to determine the credit risk of bank customers. Business Intelligence Management Studies, 2018. 6(22): p. 129-154.
- BASHA, S.G., Importance of Data Mining in Banking Sectors. 2017.
- Marek, W. and Z. Pawlak, Rough sets and information systems. Fundamenta Informaticae, 1984. 7(1): p. 105-115.
- Pawlak, Z., Rough sets. International journal of computer & information sciences, 1982. 11: p. 341-356.
- Papakyriakou, D. and I.S. Barbounakis, Data mining methods: A review. Int. J. Comput. Appl, 2022. 183(48): p. 5-19.
- Jackson, J., Data mining; a conceptual overview. Communications of the Association for Information Systems, 2002. 8(1): p. 19.
- Padhy, N., D.P. Mishra, and R. Panigrahi, The survey of data mining applications and feature scope. arXiv preprint arXiv:1211.5723, 2012.
- Kesavaraj, G. and S. Sukumaran. A study on classification techniques in data mining. in the 2013 fourth international conference on computing, communications and networking technologies (ICCCNT). 2013. IEEE.
- Jadhav, S.D. and H. Channe, Comparative study of K-NN, naive Bayes and decision tree classification techniques. International Journal of Science and Research (IJSR), 2016. 5(1): p. 1842-1845.
- Gerhana, Y., et al. Comparison of naive Bayes classifier and C4. 5 algorithms in predicting student study period. In Journal of Physics: Conference Series. 2019. IOP Publishing.
- Vijayarani, S. and S. Dhayanand, Liver disease prediction using SVM and Naïve Bayes algorithms. International Journal of Science, Engineering and Technology Research (IJSETR), 2015. 4(4): p. 816-820.
- Muralidharan, V. and V. Sugumaran, A comparative study of Naïve Bayes classifier and Bayes net classifier for fault diagnosis of monoblock centrifugal pump using wavelet analysis. Applied Soft Computing, 2012. 12(8): p. 2023-2029.
- Abiodun, O.I., et al., State-of-the-art in artificial neural network applications: A survey. Heliyon, 2018. 4(11).
- Fletcher, T., Support vector machines explained. Tutorial paper, 2009. 1118: p. 1-19.
- Zandi, S., et al., Attention-based Dynamic Multilayer Graph Neural Networks for Loan Default Prediction. arXiv preprint arXiv:2402.00299, 2024.
- Chen, B., W. Jin, and H. Lu, Using a genetic backpropagation neural network model for credit risk assessment in the micro, small and medium-sized enterprises. Heliyon, 2024. 10(14).
- Montevechi, A.A., et al., Advancing credit risk modeling with Machine Learning: A comprehensive review of the state-of-the-art. Engineering Applications of Artificial Intelligence, 2024. 137: p. 109082.
- Zhang, X. and L. Yu, Consumer credit risk assessment: A review from the state-of-the-art classification algorithms, data traits, and learning methods. Expert Systems with Applications, 2024. 237: p. 121484.
- Addy, W.A., et al., Predictive analytics in credit risk management for banks: A comprehensive review. GSC Advanced Research and Reviews, 2024. 18(2): p. 434-449.
- Chandrasiri, T.D. and S.C. Premaratne Enhancing Credit Risk Analysis of SME Loans by Using Data Mining Techniques. 2023.
- Jumaa, M., M. Saqib, and A. Attar, Improving credit risk assessment through deep learning-based consumer loan default prediction model. International Journal of Finance & Banking Studies (2147-4486), 2023. 12(1): p. 85-92.
- Chen, Q., Interpretable Data Mining Approaches to Predict Term Deposits Subscriptions. BCP Business & Management, 2023. 44: p. 345-350.
- Anand, M., A. Velu, and P. Whig, Prediction of loan behaviour with machine learning models for secure banking. Journal of Computer Science and Engineering (JCSE), 2022. 3(1): p. 1-13.
- Munoz, J., et al., Deep learning based bi-level approach for proactive loan prospecting. Expert Systems with Applications, 2021. 185: p. 115607.
- Desta, A.W. and J.S. Nixon, Data mining application in predicting bank loan defaulters. International Journal of Innovative Technology and Exploring Engineering, 2020. 9(4).
- Wang, J., et al., Rough set and scatter search metaheuristic based feature selection for credit scoring. Expert Systems with Applications, 2012. 39(6): p. 6123-6128.
- Crone, S.F. and S. Finlay, Instance sampling in credit scoring: An empirical study of sample size and balancing. International Journal of Forecasting, 2012. 28(1): p. 224-238.
- Koutanaei, F.N., H. Sajedi, and M. Khanbabaei, A hybrid data mining model of feature selection algorithms and ensemble learning classifiers for credit scoring. Journal of Retailing and Consumer Services, 2015. 27: p. 11-23.
- Gulsoy, N. and S. Kulluk, A data mining application in credit scoring processes of small and medium enterprises commercial corporate customers. Wiley Interdisciplinary Reviews: Data Mining and Knowledge Discovery, 2019. 9(3): p. e1299.
- Jisha, M. and D.V. Kumar, A CASE STUDY ON DATA MINING APPLICATIONS ON BANKING SECTOR. 2018.
- Hamid, A.J. and T.M. Ahmed, Developing prediction model of loan risk in banks using data mining. Machine Learning and Applications: An International Journal, 2016. 3(1): p. 1-9.
- Hooman, A., et al., Statistical and data mining methods in credit scoring. The Journal of Developing Areas, 2016. 50(5): p. 371-381.
- Eskandari, J. and Rouhi, credit risk management of bank customers using improved decision vector machine method with genetic algorithm with data mining approach. Asset Management and Financing, 2017. 5(4): p. 17-32.
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