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Generalized Belief Propagation on Tree Robust Structured Region Graphs

机译:树鲁棒结构区域图的广义信度传播

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This paper provides some new guidance in the construction of region graphs for Generalized Belief Propagation (GBP). We connect the problem of choosing the outer regions of a Loop-Structured Region Graph (SRG) to that of finding a fundamental cycle basis of the corresponding Markov network. We also define a new class of tree-robust Loop-SRG for which GBP on any induced (spanning) tree of the Markov network, obtained by setting to zero the off-tree interactions, is exact. This class of SRG is then mapped to an equivalent class of tree-robust cycle bases on the Markov network. We show that a tree-robust cycle basis can be identified by proving that for every subset of cycles, the graph obtained from the edges that participate in a single cycle only, is multiply connected. Using this we identify two classes of tree-robust cycle bases: planar cycle bases and "star" cycle bases. In experiments we show that tree-robustness can be successfully exploited as a design principle to improve the accuracy and convergence of GBP.
机译:本文为构建广义信念传播(GBP)区域图提供了一些新的指导。我们将选择环路结构区域图(SRG)外部区域的问题与找到相应的马尔可夫网络的基本循环基础的问题联系起来。我们还定义了一种新的树型鲁棒Loop-SRG,对于此类树,通过将树外交互作用设置为零,可以得到在马尔可夫网络的任何诱导(生成)树上的GBP精确的信息。然后,将此类SRG映射到基于Markov网络的等效类树-鲁棒循环。我们证明,通过证明对于循环的每个子集,从仅参与单个循环的边获得的图被多重连接,可以确定树的鲁棒循环基础。使用此方法,我们确定了两类树型稳健的循环基数:平面循环基数和“星形”循环基数。在实验中,我们表明树的鲁棒性可以成功地用作提高GBP准确性和收敛性的设计原理。

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