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Distributed convergence verification for Gaussian belief propagation

机译:高斯信念传播的分布式收敛验证

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Gaussian belief propagation (BP) is a computationally efficient method to approximate the marginal distribution and has been widely used for inference with high dimensional data as well as distributed estimation in large-scale networks. However, the convergence of Gaussian BP is still an open issue. Though sufficient convergence conditions have been studied in the literature, verifying these conditions requires gathering all the information over the whole network, which defeats the main advantage of distributed computing by using Gaussian BP. In this paper, we propose a novel sufficient convergence condition for Gaussian BP that applies to both the pairwise linear Gaussian model and to Gaussian Markov random fields. We show analytically that this sufficient convergence condition can be easily verified in a distributed way that satisfies the network topology constraint.
机译:高斯置信传播(BP)是一种计算效率高的方法,用于近似边际分布,已被广泛用于高维数据的推断以及大规模网络中的分布估计。但是,高斯BP的收敛性仍然是一个未解决的问题。尽管已经在文献中研究了足够的收敛条件,但要验证这些条件需要在整个网络上收集所有信息,这使使用高斯BP的分布式计算的主要优势大打折扣。在本文中,我们为高斯BP提出了一个新颖的充分收敛条件,该条件既适用于成对线性高斯模型,也适用于高斯马尔可夫随机场。我们通过分析表明,可以通过满足网络拓扑约束的分布式方式轻松验证这种足够的收敛条件。

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