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Fuzzy logic and evolutionary algorithm—two techniques in rule extraction from neural networks

机译:模糊逻辑和进化算法-神经网络规则提取的两种技术

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In this paper, the REX method of fuzzy rule extraction from neural networks (NN) is presented. It is based on evolutionary algorithms. In the search process of the evolutionary algorithm, a set of rules describing the performance of the NN is found. An evolutionary algorithm is also responsible for obtaining proper fuzzy sets. Two approaches are compared, namely REX Pitt and REX Michigan. The main difference lies in the information contained in one chromosome. In REX Pitt, one individual represents a set of rules, while in REX Michigan it represents one rule. The obtained results are compared to other known methods. REX Pitt has very good efficiency, producing a small number of fuzzy rules, while REX Michigan creates more low quality rules.
机译:本文提出了一种从神经网络(NN)中提取模糊规则的REX方法。它基于进化算法。在进化算法的搜索过程中,发现了一组描述NN性能的规则。进化算法还负责获得适当的模糊集。比较了两种方法,即REX Pitt和REX Michigan。主要区别在于一条染色体中包含的信息。在REX Pitt中,一个人代表一组规则,而在REX Michigan中,它代表一个规则。将获得的结果与其他已知方法进行比较。 REX Pitt的效率很高,产生少量的模糊规则,而REX Michigan则创建更多的低质量规则。

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