An Integrated Fusion Framework for Ensemble Learning Leveraging Gradient-Boosting and Fuzzy Rule-Based Models

Jinbo Li;Peng Liu;Long Chen;Witold Pedrycz;Weiping Ding
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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 article 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.
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利用梯度提升和模糊规则模型的集合学习综合融合框架
长期以来,不同学习范式的整合一直是机器学习研究的重点,其目的是克服个别方法的固有局限性。基于模糊规则的模型在可解释性方面表现出色,已在多个领域得到广泛应用。然而,它们也面临着一些挑战,如复杂的设计规范和大型数据集的可扩展性问题。将不同的技术和策略,特别是梯度提升技术,与基于模糊规则的模型进行融合,为应对这些挑战提供了一种稳健的解决方案。本文提出了一个综合融合框架,融合了两种范式的优势,以提高模型的性能和可解释性。在每次迭代中,都会构建一个基于模糊规则的模型,并由一个动态因子进行控制,以优化其对整体集合的贡献。该控制因子有多种作用:防止模型占主导地位,鼓励多样性,充当正则化参数,并提供基于模型性能的动态调整机制,从而降低过度拟合的风险。此外,该框架还包含一种基于样本的修正机制,可根据验证集的反馈进行自适应调整。实验结果证明了所介绍的梯度提升框架在基于模糊规则的模型中的功效,展示了性能的提升,尤其是在减轻过拟合和通常与许多规则相关的复杂性方面。通过利用最优因子来控制每个模型的贡献,该框架提高了性能,保持了可解释性,并简化了模型的维护和更新。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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