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Bethe-ADMM for Tree Decomposition based Parallel MAP Inference

机译:Bethe-ADMM用于基于树分解的并行MAP推理

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We consider the problem of maximum a posteriori (MAP) inference in discrete graphical models. We present a parallel MAP inference algorithm called Bethe-ADMM based on two ideas: tree-decomposition of the graph and the alternating direction method of multipliers (ADMM). However, unlike the standard ADMM, we use an inexact ADMM augmented with a Bethe-divergence based proximal function, which makes each subproblem in ADMM easy to solve in parallel using the sum-product algorithm. We rigorously prove global convergence of Bethe-ADMM. The proposed algorithm is extensively evaluated on both synthetic and real datasets to illustrate its effectiveness. Further, the parallel Bethe-ADMM is shown to scale almost linearly with increasing number of cores.
机译:我们考虑离散图形模型中最大后验(MAP)推断的问题。我们基于两个思想提出了一种称为Bethe-ADMM的并行MAP推理算法:图形的树分解和乘数的交替方向方法(ADMM)。但是,与标准ADMM不同,我们使用不精确的ADMM加上基于Bethe-散度的近端函数,这使得ADMM中的每个子问题都可以使用求和积算法轻松并行解决。我们严格证明Bethe-ADMM的全球融合。该算法在合成数据集和真实数据集上都得到了广泛评估,以说明其有效性。此外,并行的Bethe-ADMM显示出随着铁芯数量的增加几乎线性地缩放。

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