Prediction of Loan Approval in Banks Using Machine Learning Approach
Due to significant technological advancements, people's needs have expanded. As a result, there have been more requests for loan approval in the banking sector. A few qualities are taken into consideration when choosing a candidate for the loan approval in order to, determine the loan's status. Banks face a major challenge; when it, comes to assessing loan applications and lowering the risks associated with potential borrower defaults. Since they must thoroughly evaluate each borrower's eligibility for a loan, banks find this process to be particularly challenging. This research proposes combining machine learning (ML) models and ensemble learning approaches to find the probability of accepting individual loan requests. This tactic can increase the accuracy with which qualified candidates are selected from a pool of applicants. As a result, this method can be used to address the problems with loan approval processes outlined above. Both the loan applicants and the bank employees profit from the strategy's dramatic reduction in sanctioning time. Because of the banking industry's expansion, more people were applying for loans at banks. In order to predict the accuracy of loan approval status for an applied person, we used four different algorithms namely Random Forest, Naive Bayes, Decision Tree, and KNN. By using these, we obtained better accuracy of 83.73% with the Naïve Bayes algorithm as the best one
Year of publication: |
[2023]
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Authors: | V, Viswanatha ; A.C, Ramachandra ; K N, Vishwas ; G, Adithya |
Publisher: |
[S.l.] : SSRN |
Subject: | Künstliche Intelligenz | Artificial intelligence | Prognoseverfahren | Forecasting model | Kreditwürdigkeit | Credit rating | Bank |
Saved in:
freely available
Extent: | 1 Online-Ressource (13 p) |
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Type of publication: | Book / Working Paper |
Language: | English |
Notes: | In: International Journal of Engineering and Management Research, Volume-13, Issue-4 (August 2023) Nach Informationen von SSRN wurde die ursprüngliche Fassung des Dokuments August 4, 2023 erstellt |
Source: | ECONIS - Online Catalogue of the ZBW |
Persistent link: https://www.econbiz.de/10014352455
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