数据集分类中模糊规则生成的混合网格划分和粗糙集方法

Adeola Azy Daniachew, Averey Barack Clevon, Abimelech Keita Avram, Dodavah Tesseman Chislon
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引用次数: 0

摘要

本研究通过开发一种混合网格划分和粗糙集方法来解决基于模糊规则的分类系统中的指数规则生成问题。基于模糊规则的分类系统有可能构建语言上可理解的模型,但一个主要的限制是具有大量属性的规则数量的显著增加,这可能会降低解释和分类的准确性。本研究采用网格划分法生成自适应调整网格结构的模糊规则,避免了指数规则的扩散。该研究包括Iris Flower数据集的使用、考虑变量精度的规则形成和分类精度测试。研究结果表明,混合网格划分和粗糙集方法生成的模糊规则更加高效、准确,分类准确率达到83.33%。该方法还成功地减少了生成规则的数量,使其成为解决基于模糊规则的分类系统中指数规则增长问题的一个有希望的解决方案
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Hybrid Grid Partition and Rought Set Methods for Generating Fuzzy Rules in Data Set Classification
This research aims to address the issue of exponential rule generation in fuzzy rule-based classification systems by developing a hybrid grid partition and rough set method. Fuzzy rule-based classification systems have the potential to construct linguistically understandable models, but a major constraint is the significant increase in the number of rules with a high number of attributes, which can diminish interpretation and classification accuracy. In this study, the grid partition method is utilized to generate fuzzy rules with adaptively adjusted grid structures, thus avoiding exponential rule proliferation. The research encompasses the use of the Iris Flower dataset, rule formation while considering variable precision, and classification accuracy testing. The research findings indicate that the hybrid grid partition and rough set method produces more efficient and accurate fuzzy rules, with a classification accuracy rate of 83.33%. This method also successfully reduces the number of generated rules, making it a promising solution to tackle the issue of exponential rule increase in fuzzy rule-based classification systems
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