Abstract
In banking sector credit score plays a very important factor. It is important to find which customer is valid and which is not valid for loan. Now to classify customer’s credit score is used. Based on this credit score of customers the bank will decide whether to approve loan or not. In banks there are major failures due to credit risks. We can automate this by using various Machine learning algorithms to identify loan defaulters. To classify and predict the customers here various Machine learning techniques like gradient boosting, random forest and Feature Selection technique along with Decision Tree are used. Using these algorithms we accurately classify valid and invalid customers for loan. Designed model can classify their customers into good and bad applicants and train the model for getting the better accuracy of the customer data.
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Kokate, S., & Chetty, M. S. R. (2021). Credit risk assessment of loan defaulters in commercial banks using voting classifier ensemble learner machine learning model. International Journal of Safety and Security Engineering, 11(5), 565–572. https://doi.org/10.18280/IJSSE.110508
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