Knowledge extraction using a genetic fuzzy rule-based system with increased interpretability

Rogério Ishibashi, C. Nascimento
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引用次数: 9

Abstract

In this paper a fuzzy rule-based system is trained to perform a classification task using a genetic algorithm and a fitness function that simultaneously considers the accuracy of the model and its interpretability. Initially a decision tree is created using any tree induction algorithm such as CART, ID3 or C4.5. This tree is then used to generate a fuzzy rule-based system. The parameters of the membership functions are adjusted by the genetic algorithm. As a case study, the proposed method is applied to an appendicitis dataset with 106 instances (input-output pairs), 7 normalized real-valued inputs and 1 binary output.
利用基于遗传模糊规则的系统进行知识提取,提高了可解释性
本文利用遗传算法和同时考虑模型准确性和可解释性的适应度函数训练了一个基于模糊规则的系统来执行分类任务。最初,使用任何树归纳算法(如CART、ID3或C4.5)创建决策树。然后使用这棵树来生成一个模糊的基于规则的系统。通过遗传算法对隶属函数的参数进行调整。作为案例研究,将该方法应用于具有106个实例(输入-输出对)、7个归一化实值输入和1个二进制输出的阑尾炎数据集。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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