文章詳目資料

International Journal of Applied Science and Engineering Scopus

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篇名 Generating Weighted Fuzzy Rules from Training Data for Dealing with the Iris Data Classification Problem
卷期 4:1
作者 Yung-Chou ChenLi-HuiWangShyi-Ming Chen
頁次 041-052
關鍵字 fuzzy classification systemsfuzzy setsIris datamembership functionsweighted fuzzy rulesScopus
出刊日期 200604

中文摘要

英文摘要

The most important task in the design of fuzzy classification systems is to find a set of fuzzy rules from training data to deal with a specific classification problem. In this paper, we present a new method to generate weighted fuzzy rules from training data to deal with the Iris data classification problem. First, we convert the training data to fuzzy rules, and then we merge those fuzzy rules in order to reduce the number of fuzzy rules. Then, we calculate the weight of each input variable appearing in the generated fuzzy rules by the relationships of input variables. The proposed weighted fuzzy rules generation method gets a higher average classification accuracy rate than the existing methods.

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