在常规网络上通过共识进行高效学习

Zhiyuan Weng, P. Djurić
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引用次数: 1

摘要

在网络中,每个代理都与其邻居通信。所有的智能体都有最初的观察结果,他们用邻居的平均值来更新他们的信念。众所周知,从长远来看,网络将达成共识。然而,智能体并不一定收敛于网络中所有智能体初始观测值的全局平均值。相反,结果总是一个加权平均值。此外,该过程需要无限长的时间才能收敛。在本文中,我们处理常规的代理网络,其中每个代理(节点)具有相同数量的代理。我们提出了一种方法,允许这些网络中的智能体在有限时间内使用其局部平均值的历史来学习全局平均值。
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Efficient learning by consensus over regular networks
In a network, each agent communicates with its neighbors. All the agents have initial observations, and they update their beliefs with the average of the beliefs in their neighborhoods. It is well known that in the long run, the network will reach consensus. However, the agents do not necessarily converge to the global average of the initial observations of all the agents in the network. Instead, the result is always a weighted average. Moreover, it takes infinite time for the process to converge. In this paper, we address regular networks of agents, where each agent (node) has the same number of agents. We propose a method that allows agents in these networks to learn the global average using the history of its local average in finite time.
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