模糊逻辑控制神经网络学习

Qing Hu, David B. Hertz
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引用次数: 6

摘要

采用反向传播训练算法的多层前馈神经网络收敛速度慢且不确定,主要是由于寻找具有静态控制参数的权矩阵的动态过程具有迭代性。本研究探讨模糊逻辑在控制此类神经网络学习过程中的应用。本文提出的神经网络中的每个学习神经元在训练过程中都有自己的学习率,由模糊逻辑控制器根据神经元的输出误差和一组启发式规则动态调整。对比测试表明,这种模糊反向传播算法稳定了这些神经网络的训练过程,因此产生的收敛测试比传统反向传播算法多2到3倍。研究并讨论了训练过程对模糊集和隶属函数变化的敏感性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Fuzzy logic controlled neural network learning

The slow and uncertain convergence of multilayer feedforward neural networks using the backpropagation training algorithm is caused mainly by the iterative nature of the dynamic process of finding the weight matrices with static control parameters. This study investigates the use of fuzzy logic in controlling the learning processes of such neural networks. Each learning neuron in the neural networks suggested here has its own learning rate dynamically adjusted by a fuzzy logic controller during the course of training according to the output error of the neuron and a set of heuristic rules. Comparative tests showed that such fuzzy backpropagation algorithms stabilized the training processes of these neural networks and, therefore, produced 2 to 3 times more converged tests than the conventional backpropagation algorithms. The sensitivities of the training processes to the variations of fuzzy sets and membership functions are examined and discussed.

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