从人工神经网络学习模糊规则

W. Textor, S. Wessel, K.-U. Hoffgen
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引用次数: 1

摘要

给出了一种从神经网络模型中提取模糊规则的算法——自组织特征映射。这些规则也可以转化为语言形式。该算法通过模糊规则描述映射的末端构型,对学习过程后的映射进行解释。这种方法可以用于知识获取领域,如果只有大量的给定领域的未分类数据可用。提出了知识抽取算法的基本思想。描述了隶属函数的生成。描述了从这些隶属函数中创建规则的过程。给出了用实际数据集对算法进行测试的结果。
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Learning fuzzy rules from artificial neural nets
An algorithm is given for extracting fuzzy rules from a neural net model called a self-organizing feature map. These rules can also be transformed into a linguistic form. The algorithm gives an interpretation of the map after the learning process by describing its end configuration with fuzzy rules. This approach can be used in the area of knowledge acquisition if only a vast set of unclassified data of a given domain is available. The underlying ideas of the knowledge extraction algorithm are presented. The generation of membership functions is depicted. The process of creating rules out of these membership functions is described. The results of testing the algorithm with some real data sets are presented.<>
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