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Event-Triggered Distributed Cooperative Learning Algorithms over Networks via Wavelet Approximation

机译:通过小波逼近的事件触发的分布式协作学习算法

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This paper investigates the problem of event-triggered distributed cooperative learning (DCL) over networks based on wavelet approximation theory, where each node only has access to local data which are produced by the same and unknown pattern (map or function). All nodes cooperatively learn this unknown pattern by exchanging learned information with their neighboring nodes under event-triggered strategy in order to remove unnecessary communications, so as to avoid the waste of network resources. For the above problem, two novel event-triggered continuous-time and discrete-time DCL algorithms are proposed to approximate the unknown pattern by using wavelet basis function. The proposed event-triggered DCL algorithms are used to train the optimal weight coefficient matrix of wavelet series. Moreover, the convergence of the proposed algorithms are presented by using the Lyapunov method, and the Zeno behavior is excluded as well by the strictly positive sampling interval. The illustrative examples are presented to show the efficiency and convergence of the proposed algorithms.
机译:本文研究基于小波逼近理论的网络事件触发的分布式合作学习(DCL)问题,其中每个节点只能访问由相同和未知模式(图或函数)生成的本地数据。所有节点在事件触发策略下通过与相邻节点交换学习到的信息来协作学习该未知模式,以消除不必要的通信,从而避免浪费网络资源。针对上述问题,提出了两种新颖的事件触发的连续时间和离散时间DCL算法,以利用小波基函数近似未知模式。提出的事件触发DCL算法用于训练小波序列的最优加权系数矩阵。此外,使用Lyapunov方法对算法进行了收敛,严格的正采样间隔也排除了Zeno行为。给出了说明性示例,以显示所提出算法的效率和收敛性。

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