首页> 外文会议>Fuzzy Systems Conference Proceedings, 1999. FUZZ-IEEE '99. 1999 IEEE International >Fuzzy-arithmetic-based approach for extracting positive and negative linguistic rules from trained neural networks
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Fuzzy-arithmetic-based approach for extracting positive and negative linguistic rules from trained neural networks

机译:基于模糊算法的训练神经网络提取正负语言规则的方法

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摘要

Our method extracts linguistic rules from trained neural networks for high-dimensional pattern classification problems with continuous attributes. Characteristic features of our rule extraction method are as follows: (I)It can extract fuzzy if-then rules with linguistic interpretation. Extracted fuzzy if-then rules are always linguistically interpretable. (2) It can handle existing feedforward neural networks that have already been trained. Neither specific learning algorithms nor tailored network architectures are assumed. It does not change weight values of the trained neural networks during the rule extraction process. (3) It is based on fuzzy arithmetic. Linguistic values such as "small" and "large" are presented to neural networks, and corresponding fuzzy outputs are calculated by fuzzy arithmetic for extracting linguistic rules. (4) Negative linguistic rules can be extracted from trained neural networks as well as positive rules. After briefly describing our method, we discuss the accuracy of fuzzy arithmetic and show subdivision methods for decreasing the excess fuzziness in fuzzy outputs from neural networks. We also discuss the handling of negative linguistic rules such as "If x/sub 1/ is small and x/sub 2/ is not large then Class 3" and "If x/sub 1/ is large then not Class 2".
机译:我们的方法从训练有素的神经网络中提取具有连续属性的高维模式分类问题的语言规则。我们的规则提取方法的特征如下:(I)可以用语言解释提取模糊的if-then规则。提取的if-then规则在语言上总是可以解释的。 (2)它可以处理已经训练过的现有前馈神经网络。既不假定特定的学习算法也不针对定制的网络体系结构。它不会在规则提取过程中更改训练后的神经网络的权重值。 (3)基于模糊算法。将诸如“小”和“大”的语言值呈现给神经网络,并通过模糊算法计算相应的模糊输出以提取语言规则。 (4)可以从训练有素的神经网络中提取否定语言规则以及肯定规则。在简要介绍了我们的方法之后,我们讨论了模糊算法的准确性,并展示了用于减少神经网络模糊输出中过多模糊性的细分方法。我们还讨论了否定语言规则的处理,例如“如果x / sub 1 /小而x / sub 2 /不大,则是Class 3”和“如果x / sub 1 /大而又不是2类”。

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