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Fixing Max-Product: Convergent Message Passing Algorithms for MAP LP-Relaxations

机译:Fixing Max-Product:用于MAP LP放松的收敛消息传递算法

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We present a novel message passing algorithm for approximating the MAP problem in graphical models. The algorithm is similar in structure to max-product but unlike max-product it always converges, and can be proven to find the exact MAP solution in various settings. The algorithm is derived via block coordinate descent in a dual of the LP relaxation of MAP, but does not require any tunable parameters such as step size or tree weights. We also describe a generalization of the method to cluster based potentials. The new method is tested on synthetic and real-world problems, and compares favorably with previous approaches.
机译:我们提出了一种新颖的消息传递算法,用于近似化图形模型中的MAP问题。该算法的结构类似于max-product,但是与max-product不同,它始终收敛,并且可以证明在各种设置下都能找到精确的MAP解决方案。该算法是通过MAP的LP松弛对偶中的块坐标下降而得出的,但不需要任何可调参数,例如步长或树权重。我们还描述了对基于电位的聚类方法的概括。该新方法已在综合问题和实际问题上进行了测试,并且与以前的方法相比具有优势。

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