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On the Generalized Belief Propagation and its dynamics

机译:广义信念传播及其动力学

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Numerous inference problems in statistical physics, computer vision or error-correcting coding theory consist in approximating the marginal probability distributions on Markov Random Fields (MRF). The Belief Propagation (BP) is an accurate solution that is optimal if the MRF is loop free and suboptimal otherwise. In the context of error-correcting coding theory, any Low-Density Parity-Check (LDPC) code has a graphical representation, the Tanner graph, which is a particular MRF. It is used as a media for the BP algorithm to correct the bits, damaged by a noisy channel, by estimating their probability distributions. Though loops and combination thereof in the Tanner graph prevent the BP from being optimal, especially harmful topological structures called the trapping-sets. The BP has been extended to the Generalized Belief Propagation (GBP). This message-passing algorithm runs on a non unique mapping of the Tanner graph, namely the regiongraph, such that its nodes are gatherings of the Tanner graph nodes. Then it appears the possibility to decrease the loops effect, making the GBP more accurate than the BP. In this article, we expose a novel region graph construction suited to the Tanner code, an LDPC code whose Tanner graph is entirely covered by trapping-sets. Furthermore, we investigate the dynamic behavior of the GBP compared with that of the BP to understand its evolution in terms of the Signal-to-Noise Ratio (SNR). To this end we make use of classical estimators and we introduce a new one called the hyperspheres method.
机译:统计物理学,计算机视觉或纠错编码理论中的许多推理问题在于近似估计马尔可夫随机场(MRF)上的边际概率分布。信念传播(BP)是一种精确的解决方案,如果MRF是无循环的,则是最佳选择,否则是次优的。在纠错编码理论的上下文中,任何低密度奇偶校验(LDPC)代码都具有图形表示形式,即Tanner图,它是特定的MRF。它被用作BP算法的介质,以通过估计它们的概率分布来纠正被噪声信道损坏的比特。尽管Tanner图中的回路及其组合会阻止BP最优,尤其是有害的拓扑结构(称为陷阱集)。 BP已扩展到广义信仰传播(GBP)。该消息传递算法在Tanner图(即区域图)的非唯一映射上运行,因此其节点是Tanner图节点的集合。然后,似乎有可能降低循环效应,使GBP比BP更准确。在本文中,我们介绍了一种适合于Tanner代码的新颖区域图结构,该结构是LDPC代码,其Tanner图完全被陷印集覆盖。此外,我们研究了GBP相对于BP的动态行为,以了解其在信噪比(SNR)方面的发展。为此,我们利用经典估计量,并引入了一种新的超球面方法。

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