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Manifold regularization based distributed semi-supervised learning algorithm using extreme learning machine over time-varying network

机译:时变网络上使用极限学习机的基于流形正则化的分布式半监督学习算法

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摘要

This paper aims to propose a distributed semi-supervised learning (SSL) algorithm using extreme learning machine (ELM) over time-varying communication network, whose topology changes over time rather than being fixed. In distributed SSL problems, training data including labeled and unlabeled samples is separately stored on each node over the communication network and cannot be centrally processed. In order to solve these problems, we propose an algorithm combining the semi-supervised ELM (SS-ELM) algorithm with the zero-gradient-sum (ZGS) distributed optimization strategy. The SS-ELM algorithm, based on the manifold regularization (MR) framework, is used to approximate the mapping of samples on each node over the communication network. Then, the ZGS strategy is used to train the globally optimal coefficients of the single layer feed-forward neural network (SLFNN) corresponding to the SS-ELM algorithm. Thus, we denote the proposed algorithm as the distributed SS-ELM (DSS-ELM) algorithm. During the training process, all nodes over the communication network exchange updated coefficients rather than raw data with their neighboring nodes. It means that the DSS-ELM algorithm is a fully distributed and privacy-preserving algorithm. The convergence of the proposed DSS-ELM is guaranteed by the Lyapunov method. At last, some simulations are presented to show the efficiency of the proposed algorithm. (C) 2019 Published by Elsevier B.V.
机译:本文旨在提出一种在时变通信网络上使用极限学习机(ELM)的分布式半监督学习(SSL)算法,其拓扑结构会随时间变化而不是固定不变的。在分布式SSL问题中,包括标记和未标记样本的训练数据分别存储在通信网络上的每个节点上,并且无法进行集中处理。为了解决这些问题,我们提出了一种将半监督ELM(SS-ELM)算法与零梯度和(ZGS)分布式优化策略相结合的算法。基于流形正则化(MR)框架的SS-ELM算法用于近似通信网络上每个节点上的样本映射。然后,ZGS策略用于训练对应于SS-ELM算法的单层前馈神经网络(SLFNN)的全局最优系数。因此,我们将提出的算法表示为分布式SS-ELM(DSS-ELM)算法。在训练过程中,通信网络上的所有节点都与其相邻节点交换更新的系数,而不是原始数据。这意味着DSS-ELM算法是一种完全分布式的隐私保护算法。 Lyapunov方法保证了所提出的DSS-ELM的收敛性。最后,通过仿真实验证明了该算法的有效性。 (C)2019由Elsevier B.V.发布

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