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A novel training algorithm for RBF neural network using a hybrid fuzzy clustering approach

机译:混合模糊聚类的RBF神经网络训练算法

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This paper introduces a novel clustering-based algorithm to train Gaussian type radial basis function neural networks. In contrast to existing approaches, we develop a specialized learning strategy that combines the merits of fuzzy and crisp clustering. Crisp clustering is a fast process, yet very sensitive to initialization. On the other hand, fuzzy clustering reduces the dependency on initialization; however, it constitutes a slow learning process. The proposed strategy aims to search for a trade-off among these two potentially different effects. The produced clusters possess fuzzy and crisp areas and therefore, the final result is a hybrid partition, where the fuzzy and crisp conditions coexist. The hybrid clusters are directly involved in the estimation process of the neural network's parameters. Specifically, the center elements of the basis functions coincide with cluster centers, while the respective widths are calculated by taking into account the topology of the hybrid clusters. To this end, the network's design becomes a fast and efficient procedure. The proposed method is successfully applied to a number of experimental cases, where the produced networks prove to be highly accurate and compact in size.
机译:本文介绍了一种新的基于聚类的算法来训练高斯型径向基函数神经网络。与现有方法相反,我们开发了一种结合了模糊聚类和清晰聚类优点的专业学习策略。酥脆群集是一个快速的过程,但对初始化非常敏感。另一方面,模糊聚类减少了对初始化的依赖。但是,它构成了一个缓慢的学习过程。拟议的策略旨在在这两种潜在的不同影响之间寻求平衡。产生的簇具有模糊和脆性区域,因此最终结果是混合分区,其中模糊和脆性条件共存。混合集群直接参与神经网络参数的估计过程。具体地,基本函数的中心元素与聚类中心一致,而各个宽度是通过考虑混合聚类的拓扑来计算的。为此,网络的设计成为一种快速而有效的过程。所提出的方法已成功应用于许多实验案例,这些案例证明所产生的网络高度精确且尺寸紧凑。

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