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Main Authors: Xing, Qianwen, Yu, Chang, Huang, Sining, Zheng, Qi, Mu, Xingyu, Sun, Mengying
Format: Preprint
Published: 2024
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Online Access:https://arxiv.org/abs/2410.00256
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author Xing, Qianwen
Yu, Chang
Huang, Sining
Zheng, Qi
Mu, Xingyu
Sun, Mengying
author_facet Xing, Qianwen
Yu, Chang
Huang, Sining
Zheng, Qi
Mu, Xingyu
Sun, Mengying
contents In contemporary economic society, credit scores are crucial for every participant. A robust credit evaluation system is essential for the profitability of core businesses such as credit cards, loans, and investments for commercial banks and the financial sector. This paper combines high-performance models like XGBoost and LightGBM, already widely used in modern banking systems, with the powerful TabNet model. We have developed a potent model capable of accurately determining credit score levels by integrating Random Forest, XGBoost, and TabNet, and through the stacking technique in ensemble modeling. This approach surpasses the limitations of single models and significantly advances the precise credit score prediction. In the following sections, we will explain the techniques we used and thoroughly validate our approach by comprehensively comparing a series of metrics such as Precision, Recall, F1, and AUC. By integrating Random Forest, XGBoost, and with the TabNet deep learning architecture, these models complement each other, demonstrating exceptionally strong overall performance.
format Preprint
id arxiv_https___arxiv_org_abs_2410_00256
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Enhanced Credit Score Prediction Using Ensemble Deep Learning Model
Xing, Qianwen
Yu, Chang
Huang, Sining
Zheng, Qi
Mu, Xingyu
Sun, Mengying
Machine Learning
In contemporary economic society, credit scores are crucial for every participant. A robust credit evaluation system is essential for the profitability of core businesses such as credit cards, loans, and investments for commercial banks and the financial sector. This paper combines high-performance models like XGBoost and LightGBM, already widely used in modern banking systems, with the powerful TabNet model. We have developed a potent model capable of accurately determining credit score levels by integrating Random Forest, XGBoost, and TabNet, and through the stacking technique in ensemble modeling. This approach surpasses the limitations of single models and significantly advances the precise credit score prediction. In the following sections, we will explain the techniques we used and thoroughly validate our approach by comprehensively comparing a series of metrics such as Precision, Recall, F1, and AUC. By integrating Random Forest, XGBoost, and with the TabNet deep learning architecture, these models complement each other, demonstrating exceptionally strong overall performance.
title Enhanced Credit Score Prediction Using Ensemble Deep Learning Model
topic Machine Learning
url https://arxiv.org/abs/2410.00256