Loan Eligibility Prediction using Machine Learning

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Sainath Madhukar Powar

Abstract

The Loan Eligibility Prediction project utilizes machine learning to assess an applicant's eligibility for a loan based on key financial and demographic factors, achieving an accuracy of 85%. The model is trained on historical loan data, incorporating features such as income, credit history, loan amount, and employment status to predict approval likelihood. A web interface built using HTML, CSS, and Flask allows users to input their details and receive instant eligibility results. This system enhances efficiency for financial institutions by automating decision-making, reducing processing time, and minimizing human bias in loan approvals.

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How to Cite
Powar , S. M. (2025). Loan Eligibility Prediction using Machine Learning. International Journal on Advanced Computer Theory and Engineering, 14(1), 65–69. Retrieved from https://journals.mriindia.com/index.php/ijacte/article/view/215
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