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Loan Default Prediction Using Machine Learning Algorithms

Zhi Zheng Kang et al · MMU Press · 2025

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Financial institutions constantly face at the risk of default by borrowers which can result in significant financial losses. It is essential to develop an appropriate predictive model for loan default to reduce these risks and minimise financial losses. The objective of this study is to identify the most suitable machine learning model to predict loan default by comparing four models which are Random Forest, Decision Tree, Extreme Gradient Boosting (XGBoost), and Light Gradient Boosting Machine (LightGBM). Additionally, it also examines the key features influencing loan default prediction. The dataset used in this study is sourced from Kaggle and it consists of 148,670 rows with 34 features. As class imbalance is common in the model prediction, Synthetic Minority Over-sampling Technique (SMOTE) is applied during model training to enhance predictive performance. Model performance is evaluated using five significant assessment metrics: accuracy, precision, F1-score, recall, and the area under the receiver operating characteristic curve (ROC AUC). The outcomes indicate that LightGBM performs the best among the other models with the highest accuracy (0.9764), in addition to precision (0.9747) and recall (0.9503) scores. Feature importance analysis is conducted by using permutation importance. It identifies interest, credit type, interest rate spread, and upfront charges as the four most significant features of loan default. These findings provide useful information for financial institutions aiding risk assessment and decision-making to mitigate potential losses.

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APA 7

al, Z. Z. K. E. (2025). Loan Default Prediction Using Machine Learning Algorithms. https://journals.mmupress.com/index.php/jiwe/article/view/1680

MLA

al, Zhi Zheng Kang et. "Loan Default Prediction Using Machine Learning Algorithms." 2025. https://journals.mmupress.com/index.php/jiwe/article/view/1680.

Chicago

al, Zhi Zheng Kang et. 2025. "Loan Default Prediction Using Machine Learning Algorithms.". https://journals.mmupress.com/index.php/jiwe/article/view/1680.

Harvard

al, Z. Z. K. E. 2025, Loan Default Prediction Using Machine Learning Algorithms, MMU Press, available at: https://journals.mmupress.com/index.php/jiwe/article/view/1680 [Accessed 30 Jun. 2026].

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Título
Loan Default Prediction Using Machine Learning Algorithms
Autor / colaboradores
Zhi Zheng Kang et al
Editorial
MMU Press
Año de publicación
2025
ISSN
2821-370X
ISSN
2821-370X
Idioma
eng

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