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Classification of fuzzy input patterns by neural networks

机译:神经网络模糊输入模式的分类

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In this paper we propose an approach to the classification of fuzzy input patterns by a multilayer feedforward neural network. Our neural network can handle linguistic inputs such us "small", "medium" and "large" as well as fuzzy numbers such as "about 2" and "approximately 3". First we briefly describe the input-output relation of our neural network for fuzzy input patterns. A fuzzy input pattern is mapped to fuzzy number outputs. Next we propose a classification method of the fuzzy input pattern. In the proposed method the grade that the fuzzy input pattern belongs to each class is calculated in the framework of possibility theory. Because our approach can handle linguistic values as inputs, it can also be utilized as a fuzzy rule generation method from the trained neural network.
机译:在本文中,我们提出了一种通过多层前馈神经网络对模糊输入模式进行分类的方法。我们的神经网络可以处理语言输入,如美国“小”,“中等”和“大”以及模糊数,如“约2”和“大约3”。首先,我们简要描述了我们的神经网络的模糊输入模式的输入 - 输出关系。模糊输入模式映射到模糊数输出。接下来我们提出了一种模糊输入模式的分类方法。在提出的方法中,在可能性理论的框架中计算了模糊输入模式所属的等级。因为我们的方法可以处理语言值作为输入,所以它也可以用作来自训练的神经网络的模糊规则生成方法。

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