首页> 外文期刊>Journal of the Chinese Institute of Engineers. Series A >A NEW METHOD TO DEAL WITH FUZZY CLASSIFICATION PROBLEMS BY TUNING MEMBERSHIP FUNCTIONS FOR FUZZY CLASSIFICATION SYSTEMS
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A NEW METHOD TO DEAL WITH FUZZY CLASSIFICATION PROBLEMS BY TUNING MEMBERSHIP FUNCTIONS FOR FUZZY CLASSIFICATION SYSTEMS

机译:通过调整模糊分类系统的成员函数来处理模糊分类问题的新方法

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摘要

This paper presents a new method to construct and tune membership functions and generate fuzzy classification rules from training instances for handling the Iris data classification problem. First, we find two attributes of the Iris data from the training instances that are suitable to serve as classification criteria. Then, we construct and tune the membership functions of these two attributes and generate fuzzy classification rules from the training instances. The proposed method generates the same number of fuzzy classification rules as the number of species of the training instances. It generates fewer fuzzy classification rules and can get a higher average classification accuracy rate than the existing methods.
机译:本文提出了一种新的方法来构造和调整隶属函数,并从训练实例生成模糊分类规则,以处理虹膜数据分类问题。首先,我们从训练实例中找到虹膜数据的两个属性,它们适合用作分类标准。然后,我们构造和调整这两个属性的隶属函数,并从训练实例中生成模糊分类规则。所提出的方法产生与训练实例的种类数量相同数量的模糊分类规则。与现有方法相比,它产生的模糊分类规则更少,平均分类准确率更高。

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