Multilevel Belief Propagation for Fast Inference on Markov Random Fields

L. Xiong, Fei Wang, Changshui Zhang
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引用次数: 12

Abstract

Graph-based inference plays an important role in many mining and learning tasks. Among all the solvers for this problem, belief propagation (BP) provides a general and efficient way to derive approximate solutions. However, for large scale graphs the computational cost of BP is still demanding. In this paper, we propose a multilevel algorithm to accelerate belief propagation on Markov Random Fields (MRF). First, we coarsen the original graph to get a smaller one. Then, BP is applied on the new graph to get a coarse result. Finally the coarse solution is efficiently refined back to derive the original solution. Unlike traditional multi- resolution approaches, our method features adaptive coarsening and efficient refinement. The above process can be recursively applied to reduce the computational cost remarkably. We theoretically justify the feasibility of our method on Gaussian MRFs, and empirically show that it is also effectual on discrete MRFs. The effectiveness of our method is verified in experiments on various inference tasks.
马尔可夫随机场上快速推理的多级信念传播
基于图的推理在许多挖掘和学习任务中起着重要的作用。在该问题的所有求解方法中,信念传播(BP)提供了一种通用的、高效的近似求解方法。然而,对于大规模的图形,BP的计算成本仍然很高。本文提出了一种多层算法来加速马尔可夫随机场(MRF)上的信念传播。首先,我们对原始图进行粗化处理,得到一个较小的图。然后,将BP算法应用到新图上,得到一个粗略的结果。最后对粗解进行有效的细化,得到原始解。与传统的多分辨率方法不同,该方法具有自适应粗化和高效细化的特点。上述过程可以递归地应用,显著降低了计算成本。我们从理论上证明了我们的方法在高斯磁流变函数上的可行性,并通过经验表明它在离散磁流变函数上也是有效的。在各种推理任务的实验中验证了该方法的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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