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Collaborative learning of mixture models using diffusion adaptation

机译:使用扩散自适应的混合模型协同学习

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In large ad-hoc networks, classification tasks such as spam filtering, multi-camera surveillance, and advertising have been traditionally implemented in a centralized manner by means of fusion centers. These centers receive and process the information that is collected from across the network. In this paper, we develop a decentralized adaptive strategy for information processing and apply it to the task of estimating the parameters of a Gaussian-mixture-model (GMM). The proposed technique employs adaptive diffusion algorithms that enable adaptation, learning, and cooperation at local levels. The simulation results illustrate how the proposed technique outperforms non-collaborative learning and is competitive against centralized solutions.
机译:在大型自组织网络中,分类任务(如垃圾邮件过滤,多摄像机监视和广告)传统上是通过融合中心以集中方式实施的。这些中心接收并处理从整个网络收集的信息。在本文中,我们开发了一种分散的信息处理自适应策略,并将其应用于估计高斯混合模型(GMM)参数的任务。所提出的技术采用了自适应扩散算法,可以在本地进行自适应,学习和协作。仿真结果说明了所提出的技术如何胜过非协作学习,并且与集中式解决方案竞争。

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