Acquiring and tuning knowledge representation parameters of fuzzy production rules using fuzzy expert networks

Eric C. C. Tsang, D. Yeung
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引用次数: 1

Abstract

Fuzzy production rules (FPRs) have been used and proved to be a very useful knowledge representation method to capture and represent fuzzy, uncertain, incomplete and vague domain expert knowledge. The knowledge representation capability of these FPRs could be enhanced if parameters like local weights, certainty factors or threshold values are incorporated. These parameters, together with the membership values of fuzzy sets, are, however, difficult to acquire or extract from domain experts during the knowledge acquisition phases and to fine-tune during the system upgrade and maintenance phase. In this paper, the fuzzy expert networks (FENs) proposed by the authors in the World Congress on Neural Networks, pp. 500-3 (1996) are extended so that they can acquire and fine-tune more knowledge representation parameters (KRPs). Local weight is added to the KRPs and incorporated into the antecedent part of a conjunctive FPR. The knowledge acquisition and refinement problems of these parameters and the membership values of fuzzy sets can be solved by using FENs which not only have the reasoning mechanism of a fuzzy expert system (FES) but also the learning capability of a neural network. An experiment is presented to illustrate the workability of our proposed method.
利用模糊专家网络获取和调优模糊产生规则的知识表示参数
模糊产生规则是捕获和表示模糊、不确定、不完全和模糊领域专家知识的一种非常有用的知识表示方法。如果加入局部权重、确定性因子或阈值等参数,则可以增强fpr的知识表示能力。然而,这些参数以及模糊集的隶属度值在知识获取阶段很难从领域专家那里获取或提取,在系统升级和维护阶段也很难进行微调。本文对作者在世界神经网络大会(World Congress on Neural networks, pp. 500-3)上提出的模糊专家网络(FENs)进行了扩展,使其能够获取和微调更多的知识表示参数(KRPs)。将局部权重添加到krp中,并将其纳入联合FPR的前置部分。模糊专家系统既具有模糊专家系统(FES)的推理机制,又具有神经网络的学习能力,可以解决这些参数和模糊集隶属度值的知识获取和细化问题。最后通过实验验证了该方法的可行性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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