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Tightening LP Relaxations for MAP using Message Passing

机译:使用消息传递收紧MAP的LP松弛

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Linear Programming (LP) relaxations have become powerful tools for finding the most probable (MAP) configuration in graphical models. These relaxations can be solved efficiently using message-passing algorithms such as belief propagation and, when the relaxation is tight, provably find the MAP configuration. The standard LP relaxation is not tight enough in many real-world problems, however, and this has lead to the use of higher order cluster-based LP relaxations. The computational cost increases exponentially with the size of the clusters and limits the number and type of clusters we can use. We propose to solve the cluster selection problem monotonically in the dual LP, iteratively selecting clusters with guaranteed improvement, and quickly re-solving with the added clusters by reusing the existing solution. Our dual message-passing algorithm finds the MAP configuration in protein side-chain placement, protein design, and stereo problems, in cases where the standard LP relaxation fails.
机译:线性编程(LP)松弛已成为在图形模型中找到最可能的(MAP)配置的强大工具。可以使用诸如信念传播之类的消息传递算法来有效地解决这些松弛问题,并且当松弛程度严格时,可以找到MAP配置。但是,标准的LP松弛在许多现实世界中的问题中不够严密,这导致使用基于高阶簇的LP松弛。计算成本随着簇的大小呈指数增长,并限制了我们可以使用的簇的数量和类型。我们建议单调解决双LP中的集群选择问题,以迭代方式选择有保证的改进集群,并通过重用现有解决方案对添加的集群快速进行重新求解。我们的双重消息传递算法可以在标准LP松弛失败的情况下找到蛋白质侧链位置,蛋白质设计和立体问题中的MAP配置。

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