基于矢量量化的模糊推理系统学习算法

H. Miyajima, Noritaka Shigei, H. Miyajima
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引用次数: 2

摘要

对模糊推理系统的学习问题进行了大量的研究。具体而言,已知使用向量量化(VQ)和最陡下降法(SDM)的学习方法优于其他方法。在他们的学习方法中,VQ仅用于确定模糊规则先行部分的初始参数。为了改进这一问题,提出了用VQ法确定后续零件初始参数的方法。如前文中提出的由VQ、广义逆矩阵(GIM)和SDM三个阶段组成的学习方法。在本文中,我们将针对VQ、GIM和SDM的学习方法提出SDM学习过程的改进方法,并在数值模拟中证明这些方法在规则数量上优于传统方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Learning Algorithms for Fuzzy Inference Systems Using Vector Quantization
Many studies on learning of fuzzy inference systems have been made. Specifically, it is known that learning methods using vector quantization (VQ) and steepest descent method (SDM) are superior to other methods. In their learning methods, VQ is used only in determination of the initial parameters for the antecedent part of fuzzy rules. In order to improve them, some methods determining the initial parameters for the consequent part by VQ are proposed. For example, learning method composed of three stages as VQ, generalized inverse matrix (GIM), and SDM was proposed in the previous paper. In this paper, we will propose improved methods for learning process of SDM for learning methods using VQ, GIM, and SDM and show that the methods are superior in the number of rules to the conventional methods in numerical simulations.
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