Bank Loan Prediction Using Machine Learning Techniques
F M Ahosanul Haque, Md. Mahedi Hassan

TL;DR
This paper applies multiple machine learning algorithms to predict bank loan approvals, achieving high accuracy and demonstrating the effectiveness of ensemble methods like AdaBoosting in financial decision-making.
Contribution
The study compares various machine learning techniques for loan prediction and highlights the superior performance of ensemble methods, especially AdaBoosting, in achieving near-perfect accuracy.
Findings
AdaBoosting achieved 99.99% accuracy.
Ensemble learning significantly improves prediction performance.
Machine learning models can enhance loan approval efficiency.
Abstract
Banks are important for the development of economies in any financial ecosystem through consumer and business loans. Lending, however, presents risks; thus, banks have to determine the applicant's financial position to reduce the probabilities of default. A number of banks have currently, therefore, adopted data analytics and state-of-the-art technology to arrive at better decisions in the process. The probability of payback is prescribed by a predictive modeling technique in which machine learning algorithms are applied. In this research project, we will apply several machine learning methods to further improve the accuracy and efficiency of loan approval processes. Our work focuses on the prediction of bank loan approval; we have worked on a dataset of 148,670 instances and 37 attributes using machine learning methods. The target property segregates the loan applications into…
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Taxonomy
TopicsStock Market Forecasting Methods
MethodsSupport Vector Machine
