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A hybrid learning algorithm with a similarity-based pruning strategy for self-adaptive neuro-fuzzy systems

机译:自适应神经模糊系统的基于相似度修剪策略的混合学习算法

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摘要

An algorithm for the generation of a TS-type neuro-fuzzy system is presented. There are two stages in the generation: in the first stage, an initial structure adapted from an empty neuron or fuzzy rule set, based on the geometric growth criterion and the e-completeness of fuzzy rules; in the second stage, the obtained initial structure is refined by a hybrid learning algorithm based on backpropagation and a proposed recursive weight learning algorithm to minimize the system error. The similarity analysis applied throughout the entire learning process attempts both to alleviate overlap among membership functions and to reduce the complexity of the obtained system. Benchmark examples, comparing the proposed algorithm with previous approaches, show the proposed algorithm is more effective in terms of both model accuracy and compactness.
机译:提出了一种生成TS型神经模糊系统的算法。生成过程分为两个阶段:第一阶段,基于几何增长准则和模糊规则的电子完备性,从空的神经元或模糊规则集改编初始结构。在第二阶段,通过基于反向传播的混合学习算法和提出的递归权重学习算法对获得的初始结构进行细化,以最小化系统误差。在整个学习过程中应用的相似性分析试图减轻成员资格函数之间的重叠并降低所获得系统的复杂性。基准示例将所提出的算法与以前的方法进行了比较,表明所提出的算法在模型准确性和紧凑性方面均更为有效。

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