Advancing bankruptcy forecasting with hybrid machine learning techniques: Insights from an unbalanced Polish dataset
The challenge of bankruptcy prediction, critical for averting financial sector losses, is amplified by the prevalence of imbalanced datasets, which often skew prediction models. Addressing this, our study introduces the innovative hybrid model XGBoost+ANN, designed to leverage the strengths of both...
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2024
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my.um.eprints.441832024-06-14T07:52:16Z http://eprints.um.edu.my/44183/ Advancing bankruptcy forecasting with hybrid machine learning techniques: Insights from an unbalanced Polish dataset Ainan, Ummey Hany Por, Lip Yee Chen, Yen-Lin Yang, Jing Ku, Chin Soon HG Finance QA75 Electronic computers. Computer science The challenge of bankruptcy prediction, critical for averting financial sector losses, is amplified by the prevalence of imbalanced datasets, which often skew prediction models. Addressing this, our study introduces the innovative hybrid model XGBoost+ANN, designed to leverage the strengths of both ensemble learning and artificial neural networks. This model integrates a comprehensive set of features with parameters optimized through genetic algorithms, eschewing traditional feature selection approaches. Our research focuses on an unbalanced dataset of Polish companies and reveals that the XGBoost+ANN model, in particular, exhibits outstanding performance. Optimized using genetic algorithms and without feature selection, this model achieved the highest AUC (0.958), sensitivity (0.752), and accuracy (0.983) scores, surpassing other models in our study. This remarkable outperformance, along with the robust results, marks a substantial advancement in the field of bankruptcy prediction. It underscores the efficacy of our approach in addressing the persistent challenge of data imbalance, offering a more reliable and accurate solution for financial risk assessment. Institute of Electrical and Electronics Engineers 2024 Article PeerReviewed Ainan, Ummey Hany and Por, Lip Yee and Chen, Yen-Lin and Yang, Jing and Ku, Chin Soon (2024) Advancing bankruptcy forecasting with hybrid machine learning techniques: Insights from an unbalanced Polish dataset. IEEE Access, 12. pp. 9369-9381. ISSN 2169-3536, DOI https://doi.org/10.1109/ACCESS.2024.3354173 <https://doi.org/10.1109/ACCESS.2024.3354173>. https://doi.org/10.1109/ACCESS.2024.3354173 10.1109/ACCESS.2024.3354173 |
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HG Finance QA75 Electronic computers. Computer science Ainan, Ummey Hany Por, Lip Yee Chen, Yen-Lin Yang, Jing Ku, Chin Soon Advancing bankruptcy forecasting with hybrid machine learning techniques: Insights from an unbalanced Polish dataset |
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The challenge of bankruptcy prediction, critical for averting financial sector losses, is amplified by the prevalence of imbalanced datasets, which often skew prediction models. Addressing this, our study introduces the innovative hybrid model XGBoost+ANN, designed to leverage the strengths of both ensemble learning and artificial neural networks. This model integrates a comprehensive set of features with parameters optimized through genetic algorithms, eschewing traditional feature selection approaches. Our research focuses on an unbalanced dataset of Polish companies and reveals that the XGBoost+ANN model, in particular, exhibits outstanding performance. Optimized using genetic algorithms and without feature selection, this model achieved the highest AUC (0.958), sensitivity (0.752), and accuracy (0.983) scores, surpassing other models in our study. This remarkable outperformance, along with the robust results, marks a substantial advancement in the field of bankruptcy prediction. It underscores the efficacy of our approach in addressing the persistent challenge of data imbalance, offering a more reliable and accurate solution for financial risk assessment. |
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Article |
author |
Ainan, Ummey Hany Por, Lip Yee Chen, Yen-Lin Yang, Jing Ku, Chin Soon |
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Ainan, Ummey Hany Por, Lip Yee Chen, Yen-Lin Yang, Jing Ku, Chin Soon |
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Ainan, Ummey Hany |
title |
Advancing bankruptcy forecasting with hybrid machine learning techniques: Insights from an unbalanced Polish dataset |
title_short |
Advancing bankruptcy forecasting with hybrid machine learning techniques: Insights from an unbalanced Polish dataset |
title_full |
Advancing bankruptcy forecasting with hybrid machine learning techniques: Insights from an unbalanced Polish dataset |
title_fullStr |
Advancing bankruptcy forecasting with hybrid machine learning techniques: Insights from an unbalanced Polish dataset |
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Advancing bankruptcy forecasting with hybrid machine learning techniques: Insights from an unbalanced Polish dataset |
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advancing bankruptcy forecasting with hybrid machine learning techniques: insights from an unbalanced polish dataset |
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Institute of Electrical and Electronics Engineers |
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2024 |
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http://eprints.um.edu.my/44183/ https://doi.org/10.1109/ACCESS.2024.3354173 |
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