Integrating hybrid grid partition and rough set method for fuzzy rule generation: a novel approach for accurate dataset classification

Luke Joseph, Meiser Llywellenie O'Leary, Bisani Zagré
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Abstract

Accurate dataset classification is a critical task in various domains, and combining different methodologies can enhance classification performance. This research presents a novel approach that integrates Hybrid Grid Partition and Rough Set methods for fuzzy rule generation, aiming to improve accuracy and interpretability in dataset classification. The proposed approach leverages Hybrid Grid Partition to discretize continuous attributes and Rough Set attribute reduction to identify essential attributes, enabling accurate classification while handling uncertainty and imprecision. The generated fuzzy rules provide interpretability, aiding decision-making processes and providing insights into classification factors. The approach's robustness and generalization capabilities are demonstrated through experiments on diverse datasets, indicating its potential applicability in real-world scenarios. However, limitations such as the absence of specific evaluation metrics and the need for further validation on larger datasets are acknowledged. Overall, this research contributes to accurate dataset classification by offering a novel integrated approach and highlighting areas for future investigation and refinement
结合混合网格划分和粗糙集方法的模糊规则生成:一种精确数据集分类的新方法
准确的数据集分类是各个领域的关键任务,结合不同的方法可以提高分类性能。本文提出了一种结合混合网格划分和粗糙集方法生成模糊规则的新方法,旨在提高数据集分类的准确性和可解释性。该方法利用混合网格分割对连续属性进行离散化,利用粗糙集属性约简识别基本属性,在处理不确定性和不精确性的同时实现准确分类。生成的模糊规则提供了可解释性,帮助决策过程并提供了对分类因素的见解。通过不同数据集的实验证明了该方法的鲁棒性和泛化能力,表明其在现实场景中的潜在适用性。然而,也承认缺乏具体的评估指标和需要在更大的数据集上进一步验证等局限性。总的来说,本研究提供了一种新的综合方法,并突出了未来研究和改进的领域,有助于准确的数据集分类
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