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An Integrated Fusion Framework for Ensemble Learning Leveraging Gradient Boosting and Fuzzy Rule-Based Models
Li, Jinbo1; Liu, Peng2; Chen, Long3; Pedrycz, Witold4; Ding, Weiping5
2024-07
Source PublicationIEEE Transactions on Artificial Intelligence
ISSN2691-4581
Abstract

The integration of different learning paradigms has long been a focus of machine learning research, aimed at overcoming the inherent limitations of individual methods. Fuzzy rule-based models excel in interpretability and have seen widespread application across diverse fields. However, they face challenges such as complex design specifications and scalability issues with large datasets. The fusion of different techniques and strategies, particularly Gradient Boosting, with Fuzzy Rule-Based Models offers a robust solution to these challenges. This paper proposes an Integrated Fusion Framework that merges the strengths of both paradigms to enhance model performance and interpretability. At each iteration, a Fuzzy Rule-Based Model is constructed and controlled by a dynamic factor to optimize its contribution to the overall ensemble. This control factor serves multiple purposes: it prevents model dominance, encourages diversity, acts as a regularization parameter, and provides a mechanism for dynamic tuning based on model performance, thus mitigating the risk of overfitting. Additionally, the framework incorporates a sample-based correction mechanism that allows for adaptive adjustments based on feedback from a validation set. Experimental results substantiate the efficacy of the presented gradient boosting framework for fuzzy rule-based models, demonstrating performance enhancement, especially in terms of mitigating overfitting and complexity typically associated with many rules. By leveraging an optimal factor to govern the contribution of each model, the framework improves performance, maintains interpretability, and simplifies the maintenance and update of the models.

KeywordFuzzy Rules-based Model Incremental Models Interpretability Ensemble Learning
DOI10.1109/TAI.2024.3424427
URLView the original
Language英語English
Scopus ID2-s2.0-85198271452
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Document TypeJournal article
CollectionFaculty of Science and Technology
DEPARTMENT OF COMPUTER AND INFORMATION SCIENCE
Corresponding AuthorDing, Weiping
Affiliation1.Research Institute, China Unicom, Beijing, China
2.International Business School, Henan University, China
3.Department of Computer and Information Science, University of Macau, Macau, China
4.Department of Electrical and Computer Engineering, University of Alberta, Edmonton, AB, Canada
5.School of Information Science and Technology, Nantong University, Nantong, China
Recommended Citation
GB/T 7714
Li, Jinbo,Liu, Peng,Chen, Long,et al. An Integrated Fusion Framework for Ensemble Learning Leveraging Gradient Boosting and Fuzzy Rule-Based Models[J]. IEEE Transactions on Artificial Intelligence, 2024.
APA Li, Jinbo., Liu, Peng., Chen, Long., Pedrycz, Witold., & Ding, Weiping (2024). An Integrated Fusion Framework for Ensemble Learning Leveraging Gradient Boosting and Fuzzy Rule-Based Models. IEEE Transactions on Artificial Intelligence.
MLA Li, Jinbo,et al."An Integrated Fusion Framework for Ensemble Learning Leveraging Gradient Boosting and Fuzzy Rule-Based Models".IEEE Transactions on Artificial Intelligence (2024).
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