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Collective Online Learning of Gaussian Processes in Massive Multi-Agent Systems

机译:大规模多助理系统中高斯过程的集体在线学习

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This paper presents a novel Collective Online Learning of Gaussian Processes (COOL-GP) framework for enabling a massive number of GP inference agents to simultaneously perform (a) efficient online updates of their GP models using their local streaming data with varying correlation structures and (b) decentralized fusion of their resulting online GP models with different learned hyperparameter settings and inducing inputs. To realize this, we exploit the notion of a common encoding structure to encapsulate the local streaming data gathered by any GP inference agent into summary statistics based on our proposed representation, which is amenable to both an efficient online update via an importance sampling trick as well as multi-agent model fusion via decentralized message passing that can exploit sparse connectivity among agents for improving efficiency and enhance the robustness of our framework against transmission loss. We provide a rigorous theoretical analysis of the approximation loss arising from our proposed representation to achieve efficient online updates and model fusion. Empirical evaluations show that COOL-GP is highly effective in model fusion, resilient to information disparity between agents, robust to transmission loss, and can scale to thousands of agents.
机译:本文介绍了高斯过程的新型集体在线学习(Cool-GP)框架,用于使大量的GP推理代理商使用具有不同相关结构的本地流数据和( b)具有不同学习的超参数设置和诱导输入的由此产生的在线GP模型的分散融合。为了实现这一点,我们利用常见编码结构的概念将任何GP推理代理封装到基于我们提出的表示的摘要统计信息,该概述统计数据,这是通过重要的采样技巧可实现有效的在线更新作为多代理模型融合通过分散的消息传递,可以通过可利用代理之间的稀疏连接,以提高效率,增强我们对传输损耗的框架的鲁棒性。我们为我们提出的代表提出的近似损失提供了严格的理论分析,以实现有效的在线更新和模型融合。实证评估表明,Cool-GP在模型融合中具有高效,可弹性代理之间的信息视差,鲁棒到传输损失,并且可以扩展到数千个代理。

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