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Consensus Learning for Distributed Fuzzy Neural Network in Big Data Environment

机译:大数据环境中分布式模糊神经网络的共识学习

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摘要

Uncertainty and distributed nature inherently exist in big data environment. Distributed fuzzy neural network (D-FNN) that not only employs fuzzy logics to alleviate the uncertainty problem but also deal with data in a distributed manner, is effective and crucial for big data. Existing D-FNNs always avoided consensus for their antecedent layer due to computational difficulty. Hence such D-FNNs are not really distributed since a single model can not be agreed by multiple agents. This article proposes a true D-FNN model to handle the uncertainty and distributed challenges in the big data environment. The proposed D-FNN model considers consensus for both the antecedent and consequent layers. A novel consensus learning, which involves a distributed structure learning and a distributed parameter learning, is proposed to handle the D-FNN model. The proposed consensus learning algorithm is built on the well-known alternating direction method of multipliers, which does not exchange local data among agents. The major contribution of this paper is to propose the true D-FNN model for the big data and the novel consensus learning algorithm for this D-FNN model. Simulation results on popular datasets demonstrate the superiority and effectiveness of the proposed D-FNN model and consensus learning algorithm.
机译:在大数据环境中固有存在不确定性和分布式性质。分布式模糊神经网络(D-FNN)不仅采用模糊逻辑来缓解不确定性问题,而且还以分布式方式处理数据,对大数据有效和至关重要。由于计算难度,现有的D-FNN始终避免对其前进层的共识。因此,这种D-FNN没有真正分发,因为多个代理不能同意单个模型。本文提出了一个真正的D-FNN模型,以处理大数据环境中的不确定性和分布式挑战。建议的D-FNN模型考虑了先行和随后的层的共识。提出了一种新的共识学习,涉及分布式结构学习和分布式参数学习,以处理D-FNN模型。建议的共识学习算法基于众所周知的乘法器的交替方向方法,它不在代理之间交换本地数据。本文的主要贡献是为该D-FNN模型提出大数据的真实D-FNN模型和新的共识学习算法。流行数据集的仿真结果证明了所提出的D-FNN模型和共识学习算法的优势和有效性。

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    CIBCI lab Centre for Artificial Intelligence the School of Computer Science University of Technology Sydney Broadway NSW Australia;

    CIBCI lab Centre for Artificial Intelligence the School of Computer Science University of Technology Sydney Broadway NSW Australia;

    CIBCI lab Centre for Artificial Intelligence the School of Computer Science University of Technology Sydney Broadway NSW Australia;

    School of Information Science and Technology Nantong University Nantong China;

    Guangdong Provincial Key Laboratory of Brain-inspired Intelligent Computation Department of Computer Science and Engineering Southern University of Science and Technology Shenzhen China;

    Guangdong Provincial Key Laboratory of Brain-inspired Intelligent Computation Department of Computer Science and Engineering Southern University of Science and Technology Shenzhen China;

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  • 正文语种 eng
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  • 关键词

    Fuzzy neural networks; Big Data; Uncertainty; Computational modeling; Distributed algorithms; Clustering algorithms; Fuzzy logic;

    机译:模糊神经网络;大数据;不确定性;计算建模;分布式算法;聚类算法;模糊逻辑;

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