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American Scientific Publishing Group

verified Journal

Journal of Neutrosophic and Fuzzy Systems

ISSN
Online: 2771-6449 Print: 2771-6430
Frequency

Continuous publication

Publication Model

Open access journal. All articles are freely available online with no APC.

Journal of Neutrosophic and Fuzzy Systems
Full Length Article

Volume 2Issue 2PP: 44-56 • 2022

Applying Machine Learning Techniques To Maximize The Performance of Loan Default Prediction

Vinay Padimi 1* ,
Venkata Sravan Telu 1 ,
Devarani Devi Ningombam 1
1Department of Computer Science and Engineering, GITAM Institute of Technology, GITAM University, Visakhapatnam, Andhra Pradesh, 530045, India
* Corresponding Author.
Received: January 05, 2022 Accepted: March 22, 2022

Abstract

In peer-to-peer (P2P) lending, borrowers would access loans with lower interest rates than what they usually got from traditional lenders. People can directly borrow from the P2P platform with the rules that make them easy to borrow loans and invest free funds into P2P, which can benefit both borrowers and lenders. However, the easy way to borrow loans comes with risks. One of the major issues is that borrowers may default on the loan taken. In such cases, they can get loans quickly from P2P online platforms without any bank interferences. Thus, the lender can calculate his risk for loan default. In this project, we consider the P2P lending data to predict the loan default reassuring the lender to continue providing loans in the future. In our analysis, we consider the Logistic Regression, Naive Bayes, Random Forest, K Nearest Neighbour, and Decision tree to classify loan data based on their likelihood of default. The simulation result in our algorithm provides a significant accuracy of 94.6%.

Keywords

KNIME &nbsp Machine Learning Peer-to-peer Lending (P2P) Loan default Hyperparameter Tuning Dimensional Reduction

References

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Padimi, Vinay, Telu, Venkata Sravan, Ningombam, Devarani Devi. "Applying Machine Learning Techniques To Maximize The Performance of Loan Default Prediction." Journal of Neutrosophic and Fuzzy Systems, vol. Volume 2, no. Issue 2, 2022, pp. 44-56. DOI: https://doi.org/10.54216/JNFS.020204
Padimi, V., Telu, V., Ningombam, D. (2022). Applying Machine Learning Techniques To Maximize The Performance of Loan Default Prediction. Journal of Neutrosophic and Fuzzy Systems, Volume 2(Issue 2), 44-56. DOI: https://doi.org/10.54216/JNFS.020204
Padimi, Vinay, Telu, Venkata Sravan, Ningombam, Devarani Devi. "Applying Machine Learning Techniques To Maximize The Performance of Loan Default Prediction." Journal of Neutrosophic and Fuzzy Systems Volume 2, no. Issue 2 (2022): 44-56. DOI: https://doi.org/10.54216/JNFS.020204
Padimi, V., Telu, V., Ningombam, D. (2022) 'Applying Machine Learning Techniques To Maximize The Performance of Loan Default Prediction', Journal of Neutrosophic and Fuzzy Systems, Volume 2(Issue 2), pp. 44-56. DOI: https://doi.org/10.54216/JNFS.020204
Padimi V, Telu V, Ningombam D. Applying Machine Learning Techniques To Maximize The Performance of Loan Default Prediction. Journal of Neutrosophic and Fuzzy Systems. 2022;Volume 2(Issue 2):44-56. DOI: https://doi.org/10.54216/JNFS.020204
V. Padimi, V. Telu, D. Ningombam, "Applying Machine Learning Techniques To Maximize The Performance of Loan Default Prediction," Journal of Neutrosophic and Fuzzy Systems, vol. Volume 2, no. Issue 2, pp. 44-56, 2022. DOI: https://doi.org/10.54216/JNFS.020204
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