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Evolving fuzzy clustering algorithm based on maximum likelihood with participatory learning

机译:参与学习的基于最大似然的演化模糊聚类算法

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This paper presents a fuzzy clustering algorithm based on maximum likelihood with participatory learning. The adopted methodology is based on an online fuzzy inference system with Takagi-Sugeno evolving structure, which employs an adaptive distance norm based on the maximum likelihood criterion with instrumental variable recursive parameter estimation. The performance and application of the proposed algorithm is based on the black box modeling of nonlinear system widely cited in the literature.
机译:提出了一种基于最大似然的参与学习模糊聚类算法。所采用的方法基于具有Takagi-Sugeno演化结构的在线模糊推理系统,该系统采用基于最大似然准则的自适应距离范数和工具变量递归参数估计。该算法的性能和应用基于文献中广泛引用的非线性系统的黑匣子建模。

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