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Optimal Submodular Extensions for Marginal Estimation

机译:边际估计的最优次模扩展

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Submodular extensions of an energy function can be used to efficiently compute approximate marginals via variational inference. The accuracy of the marginals depends crucially on the quality of the submodular extension. To identify the best possible extension, we show an equivalence between the submodular extensions of the energy and the objective functions of linear programming (LP) relaxations for the corresponding MAP estimation problem. This allows us to (i) establish the optimality of the submodular extension for Potts model used in the literature; (ii) identify the optimal submodular extension for the more general class of metric labeling; and (iii) efficiently compute the marginals for the widely used dense CRF model using a recently proposed Gaussian filtering method. Using both synthetic and real data, we show that our approach provides comparable upper bounds on the log-partition function to those obtained using tree-reweighted message passing (TRW) in cases where the latter is computationally feasible. Importantly, unlike TRW, our approach provides the first practical algorithm to compute an upper bound on the dense CRF model.
机译:能量函数的亚模扩展可用于通过变分推断有效地计算近似边际。边际的准确性主要取决于子模扩展的质量。为了确定最佳扩展,我们针对相应的MAP估计问题,展示了能量的亚模扩展与线性规划(LP)松弛目标函数之间的等价关系。这使我们能够(i)为文献中使用的Potts模型建立亚模扩展的最优性; (ii)为更通用的度量标签类别确定最佳的子模扩展; (iii)使用最近提出的高斯滤波方法,有效地计算了广泛使用的密集CRF模型的边际。使用合成数据和实际数据,我们都表明,在计算上可行的情况下,我们的方法可提供与使用树加权消息传递(TRW)获得的对数分区函数可比较的上限。重要的是,与TRW不同,我们的方法提供了第一个实用的算法来计算密集CRF模型的上限。

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