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Numerical analysis of the learning of fuzzified neural networks from fuzzy if-then rules

机译:基于模糊if-then规则的模糊神经网络学习的数值分析

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The main aim of this paper is to clearly show how fuzzifed neural networks are trained by back-propagation-type learning algorithms for approximately realizing fuzzy if-then rules. Our fuzzified neural network is a three-layer feed- forward neural network where connection weights are fuzzy umbers. A set of fuzzy if-then rules is used as training data for the learning of our fuzzified neural network. That is, inputs and targets are linguistic values such as "small" and "large". In this paper, we first demonstrate that the fuzziness in training data propagates backward in our fuzzified neural network. Next we examine the ability of our fuzzified neural network to aproximately realize fuzzy if-then rules. In computer simulations, we compare for types of connection weights (i.e., real numbers, symmetric triangular fuzzy numbers, asymmetric triangular fuzzy numbers, and asymmetric trapezoidal fuzzy numbers) in terms of the fitting ability to training data and the computation time. We also examine a partially fuzzified neural network. In our partially fuzzified neural network, connection weights and biases to output units are fuzzy numbers while those to hidden units are real numbers. Simulation results show that such a partially fuzzified neural network is a good hybrid architecture of fully fuzzified neural networks and neural networks with non-fuzzy connection weights.
机译:本文的主要目的是清楚地说明如何使用反向传播型学习算法训练模糊神经网络,以近似实现模糊的if-then规则。我们的模糊神经网络是三层前馈神经网络,其中连接权重是模糊的。一组模糊的if-then规则用作训练数据,用于学习我们的模糊神经网络。即,输入和目标是语言值,例如“小”和“大”。在本文中,我们首先证明训练数据的模糊性在我们的模糊神经网络中向后传播。接下来,我们研究模糊神经网络近似实现模糊if-then规则的能力。在计算机仿真中,我们在训练数据的拟合能力和计算时间方面比较了连接权重的类型(即实数,对称三角模糊数,非对称三角模糊数和非对称梯形模糊数)。我们还研究了部分模糊的神经网络。在我们的部分模糊神经网络中,到输出单位的连接权重和偏差是模糊数,而到隐藏单位的那些权重和偏差是实数。仿真结果表明,这种部分模糊的神经网络是完全模糊的神经网络和具有非模糊连接权重的神经网络的良好混合体系结构。

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