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On the Learning Behavior of Adaptive Networks—Part II: Performance Analysis

机译:自适应网络的学习行为研究-第二部分:性能分析

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Part I of this paper examined the mean-square stability and convergence of the learning process of distributed strategies over graphs. The results identified conditions on the network topology, utilities, and data in order to ensure stability; the results also identified three distinct stages in the learning behavior of multiagent networks related to transient phases I and II and the steady-state phase. This Part II examines the steady-state phase of distributed learning by networked agents. Apart from characterizing the performance of the individual agents, it is shown that the network induces a useful equalization effect across all agents. In this way, the performance of noisier agents is enhanced to the same level as the performance of agents with less noisy data. It is further shown that in the small step-size regime, each agent in the network is able to achieve the same performance level as that of a centralized strategy corresponding to a fully connected network. The results in this part reveal explicitly which aspects of the network topology and operation influence performance and provide important insights into the design of effective mechanisms for the processing and diffusion of information over networks.
机译:本文的第一部分研究了图上分布式策略的学习过程的均方稳定性和收敛性。结果确定了网络拓扑,实用程序和数据的条件,以确保稳定性;结果还确定了与瞬态阶段I和II和稳态阶段相关的多主体网络学习行为的三个不同阶段。第二部分探讨了由网络代理进行的分布式学习的稳态阶段。除了表征单个代理的性能外,还表明网络在所有代理上均引起了有用的均衡效果。这样,嘈杂的代理的性能可以提高到与噪声数据较少的代理的性能相同的水平。进一步表明,在较小的步长大小方案中,网络中的每个代理程序都可以达到与对应于完全连接的网络的集中化策略相同的性能水平。本部分中的结果清楚地揭示了网络拓扑和操作的哪些方面会影响性能,并为设计有效的机制以在网络上处理和传播信息提供重要的见识。

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