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Multi-Evidence Lifted Message Passing, with Application to PageRank and the Kalman Filter

机译:多证据提升消息传递,应用于PageRank和卡尔曼过滤器

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Lifted message passing algorithms exploit repeated structure within a given graphical model to answer queries efficiently. Given evidence, they construct a lifted network of supernodes and superpotentials corresponding to sets of nodes and potentials that are indistinguishable given the evidence. Recently, efficient algorithms were presented for updating the structure of an existing lifted network with incremental changes to the evidence. In the inference stage, however, current algorithms need to construct a separate lifted network for each evidence case and run a modified message passing algorithm on each lifted network separately. Consequently, symmetries across the inference tasks are not exploited. In this paper, we present a novel lifted message passing technique that exploits symmetries across multiple evidence cases. The benefits of this multi-evidence lifted inference are shown for several important AI tasks such as computing personalized PageRanks and Kalman filters via multi-evidence lifted Gaussian belief propagation.
机译:提升的消息传递算法利用给定图形模型内的重复结构来有效地回答查询。在给定证据的情况下,他们构建了一个超节点和超电势的提升网络,该网络对应于在给定证据下无法区分的节点和电势集。最近,提出了有效的算法,以随着证据的不断变化来更新现有提升网络的结构。但是,在推理阶段,当前算法需要为每个证据案例构建一个单独的提升网络,并在每个提升网络上分别运行经过修改的消息传递算法。因此,不会利用推理任务的对称性。在本文中,我们提出了一种新颖的提升消息传递技术,该技术利用了跨多个证据案例的对称性。这种多证据提升的推理的好处显示在一些重要的AI任务中,例如通过多证据提升的高斯信念传播来计算个性化PageRanks和Kalman滤波器。

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