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A new data-driven neural fuzzy system with collaborative fuzzy clustering mechanism

机译:具有协同模糊聚类机制的新型数据驱动神经模糊系统

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In this paper, a novel fuzzy rule transfer mechanism for self-constructing neural fuzzy inference networks is being proposed. The features of the proposed method, termed data-driven neural fuzzy system with collaborative fuzzy clustering mechanism (DDNFS-CFCM) are; (1) Fuzzy rules are generated facilely by fuzzy c-means (FCM) and then adapted by the preprocessed collaborative fuzzy clustering (PCFC) technique, and (2) Structure and parameter learning are performed simultaneously without selecting the initial parameters. The DDNFS-CFCM can be applied to deal with big data problems by the virtue of the PCFC technique, which is capable of dealing with immense datasets while preserving the privacy and security of datasets. Initially, the entire dataset is organized into two individual datasets for the PCFC procedure, where each of the dataset is clustered separately. The knowledge of prototype variables (cluster centers) and the matrix of just one halve of the dataset through collaborative technique are deployed. The DDNFS-CFCM is able to achieve consistency in the presence of collective knowledge of the PCFC and boost the system modeling process by parameter learning ability of the self-constructing neural fuzzy inference networks (SONFIN). The proposed method outperforms other existing methods for time series prediction problems. (C) 2015 Elsevier B.V. All rights reserved.
机译:本文提出了一种用于自构造神经模糊推理网络的新型模糊规则传递机制。该方法的特点是具有协同模糊聚类机制的数据驱动神经模糊系统(DDNFS-CFCM); (1)通过模糊c均值(FCM)轻松生成模糊规则,然后通过预处理的协作模糊聚类(PCFC)技术进行调整,并且(2)在不选择初始参数的情况下同时执行结构和参数学习。 DDNFS-CFCM可以借助PCFC技术应用于处理大数据问题,该技术能够处理庞大的数据集,同时又能保护数据集的隐私和安全性。最初,将整个数据集组织为PCFC程序的两个单独的数据集,其中每个数据集都分别进行聚类。通过协作技术,可以部署原型变量(集群中心)的知识以及仅一半数据集的矩阵。 DDNFS-CFCM能够在存在PCFC的集体知识的情况下实现一致性,并通过自构造神经模糊推理网络(SONFIN)的参数学习能力来促进系统建模过程。对于时间序列预测问题,该方法优于其他现有方法。 (C)2015 Elsevier B.V.保留所有权利。

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