Hybrid Grid Partition and Rough Set Method for Fuzzy Rule Generation in Dataset Classification: Enhancing Accuracy and Interpretability

Norquist Da Silva, Gregor Bogard Hohpe
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Abstract

This research presents a hybrid grid partition and rough set method for fuzzy rule generation in dataset classification, aiming to enhance accuracy and interpretability. The proposed mathematical model combines grid partitioning, rough set theory, and fuzzy logic to identify relevant attributes, reduce dimensionality, and generate interpretable fuzzy rules. The model is evaluated using a case example of iris flower classification and demonstrates competitive accuracy in predicting the species of iris flowers based on their attributes. The interpretability of the generated fuzzy rules provides transparent explanations for the classification decisions, allowing domain experts to understand and interpret the reasoning behind the predictions. Comparative analysis with traditional algorithms showcases the superiority of the hybrid model in terms of accuracy and interpretability. Sensitivity analysis enables parameter tuning and customization, further improving the model's performance. The practical implications of the hybrid model are discussed, and its potential applications in various domains are highlighted. The research concludes that the hybrid grid partition and rough set method offer an effective approach for accurate and interpretable dataset classification, with implications for decision-making and insights in real-world applications.
混合网格划分和粗糙集方法在数据集分类中的模糊规则生成:提高准确性和可解释性
本文提出了一种网格划分和粗糙集混合的数据集分类模糊规则生成方法,旨在提高数据集分类的准确率和可解释性。该数学模型结合网格划分、粗糙集理论和模糊逻辑来识别相关属性、降维并生成可解释的模糊规则。以鸢尾花分类为例,对该模型进行了评价,结果表明该模型在基于鸢尾花的属性预测鸢尾花的种类方面具有一定的准确性。生成的模糊规则的可解释性为分类决策提供了透明的解释,允许领域专家理解和解释预测背后的推理。与传统算法的对比分析表明,混合模型在准确率和可解释性方面具有优势。灵敏度分析使参数调整和定制,进一步提高了模型的性能。讨论了混合模型的实际意义,并强调了其在各个领域的潜在应用。研究表明,混合网格划分和粗糙集方法提供了一种准确且可解释的数据集分类方法,对现实应用中的决策和见解具有重要意义。
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