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Feedback message passing for inference in gaussian graphical models

机译:高斯图形模型中用于推理的反馈消息传递

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For Gaussian graphical models with cycles, loopy belief propagation often performs reasonably well, but its convergence is not guaranteed and the computation of variances is generally incorrect. In this paper, we identify a set of special vertices called a feedback vertex set whose removal results in a cycle-free graph. We propose a feedback message passing algorithm in which non-feedback nodes send out one set of messages while the feedback nodes use a different message update scheme. Exact inference results can be obtained in O(k2n), where k is the number of feedback nodes and n is the total number of nodes. For graphs with large feedback vertex sets, we describe a tractable approximate feedback message passing algorithm. Experimental results show that this procedure converges more often, faster, and provides better results than loopy belief propagation.
机译:对于具有周期的高斯图形模型,循环信念传播通常表现得相当不错,但不能保证其收敛性,并且方差的计算通常是不正确的。在本文中,我们确定了一组称为反馈顶点集的特殊顶点,这些顶点的去除会导致生成无循环图。我们提出了一种反馈消息传递算法,其中非反馈节点发出一组消息,而反馈节点使用不同的消息更新方案。可以在O(k 2 n)中获得确切的推理结果,其中k是反馈节点的数量,n是节点的总数。对于具有较大反馈顶点集的图,我们描述了一种易于处理的近似反馈消息传递算法。实验结果表明,与循环信念传播相比,该过程收敛更快,收敛速度更快,并且提供了更好的结果。

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