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Gauge-free cluster variational method by maximal messages and moment matching

机译:最大信息和矩匹配的无规范簇变分方法

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摘要

We present an implementation of the cluster variational method (CVM) as a message passing algorithm. The kind of message passing algorithm used for CVM, usually named generalized belief propagation (GBP), is a generalization of the belief propagation algorithm in the same way that CVM is a generalization of the Bethe approximation for estimating the partition function. However, the connection between fixed points of GBP and the extremal points of the CVM free energy is usually not a one-to-one correspondence because of the existence of a gauge transformation involving the GBP messages. Our contribution is twofold. First, we propose a way of defining messages (fields) in a generic CVM approximation, such that messages arrive on a given region from all its ancestors, and not only from its direct parents, as in the standard parent-to-child GBP. We call this approach maximal messages. Second, we focus on the case of binary variables, reinterpreting the messages as fields enforcing the consistency between the moments of the local (marginal) probability distributions. We provide a precise rule to enforce all consistencies, avoiding any redundancy, that would otherwise lead to a gauge transformation on the messages. This moment matching method is gauge free, i.e., it guarantees that the resulting GBP is not gauge invariant. We apply our maximal messages and moment matching GBP to obtain an analytical expression for the critical temperature of the Ising model in general dimensions at the level of plaquette CVM. The values obtained outperform Bethe estimates, and are comparable with loop corrected belief propagation equations. The method allows for a straightforward generalization to disordered systems.
机译:我们提出了一种集群可变方法(CVM)作为消息传递算法的实现。用于CVM的消息传递算法的一种,通常称为广义置信传播(GBP),是置信传播算法的一种泛化,其方式与CVM是用于估计分区函数的Bethe近似的泛化相同。但是,由于存在涉及GBP消息的计量转换,GBP的固定点和CVM自由能的极点之间的连接通常不是一对一的对应关系。我们的贡献是双重的。首先,我们提出了一种在通用CVM近似中定义消息(字段)的方法,以使消息从其所有祖先到达给定区域,而不仅是从其直接父级到达,如标准的父子GBP一样。我们称这种方法为最大消息。其次,我们关注二进制变量的情况,将消息重新解释为加强局部(边际)概率分布矩之间一致性的字段。我们提供了一个精确的规则来强制执行所有一致性,避免任何冗余,否则将导致对消息进行量表转换。此矩匹配方法是无轨距的,即可以保证所得的GBP不是轨距不变的。我们应用最大消息和矩匹配GBP来获得在弹丸CVM级别的常规尺寸下Ising模型的临界温度的解析表达式。所获得的值优于Bethe估计值,并且可以与经过环路校正的置信度传播方程相比较。该方法允许对无序系统进行直接概括。

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