利用遗传算法从数值数据中提取模糊If-Then规则的形式化方法

Zheng Pei
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引用次数: 2

摘要

在许多应用中,需要从大量的数值数据中提取所需的知识。本文讨论了从数值数据中提取模糊if-then规则的问题。由于模糊if-then规则的可理解性与多种因素有关。我们的讨论集中在基于模糊规则的系统的简单性上,即优化输入变量的数量和模糊if-then规则的数量。首先考虑在决策信息系统中从数值数据中提取模糊规则,得到模糊规则的置信度和支持度;然后,通过编码模糊划分函数和隶属函数,选择加权置信均值和模糊规则的支持度作为适应度函数,形式化地讨论了基于遗传算法的if-then规则及其输入数量的优化问题。
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A Formalism to Extract Fuzzy If-Then Rules from Numerical Data Using Genetic Algorithms
In many applications knowledge required has to extract from a massive amount of numerical data. In this paper, extracting fuzzy if-then rules from numerical data is discussed. Due to The comprehensibility of fuzzy if-then rules is related to various factors. Our discussion is concentrated on simplicity of fuzzy rule-based systems, i.e., optimizing the number of input variables and the number of fuzzy if-then rules. Firstly, extracting fuzzy rule from numerical data is considered in decision information system, and confidence and support of fuzzy rule are obtained. Then, by encoding fuzzy partition and membership functions, selecting weighted mean of confidence and support of fuzzy rule as fitness function, optimizing the number of if-then rule and its inputs are formally discussed based on genetic algorithms (GAs)
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