基于平面点阵结构的神经网络模糊规则生成方法

E. Tazaki, N. Inoue
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引用次数: 12

摘要

在本文中,作者首先提出了一种利用平面格结构的神经网络自动提取模糊规则的方法。该神经网络由三层组成:输入层、晶格结构的隐藏层和输出层。在隐藏层中,神经元以晶格结构排列,每个神经元在晶格中被分配一个位置。隐层的每个神经元被分配一个模糊命题,该命题构成一个模糊规则。网络是通过神经元的生成/湮灭在结构上学习的。在规则学习过程之后,可以从网络中提取简单的模糊产生规则。接下来,作者将该方法扩展到多维规则的情况。作者应用该方法生成了椎间盘疝的诊断规则。
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A generation method for fuzzy rules using neural networks with planar lattice architecture
In this paper, the authors first present a method for automated extraction of fuzzy rules using neural networks with a planar lattice architecture. The neural network is composed of three layers-input layer, hidden layer with a lattice architecture and output layer. In the hidden layer, the neurons are arranged in a lattice structure, with each neuron assigned a position in a lattice. Each neuron of the hidden layer is assigned a fuzzy proposition which composes a fuzzy rule. The network is learned structurally with generation/annihilation of neurons. After the rules learning process, one may extract simple fuzzy production rules from the network. Next, the authors extend the method to the cases of multi-dimensional rules. The authors apply the proposed method to generate the diagnostic rules for hernia of an intervertebral disc.<>
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