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Monte Carlo Methods for the Ferromagnetic Potts Model Using Factor Graph Duality

机译:基于因子图对偶性的铁磁Potts模型的蒙特卡罗方法

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摘要

Normal factor graph duality offers new possibilities for Monte Carlo algorithms in graphical models. Specifically, we consider the problem of estimating the partition function of the ferromagnetic Ising and Potts models by Monte Carlo methods, which are known to work well at high temperatures but to fail at low temperatures. We propose Monte Carlo methods (uniform sampling and importance sampling) in the dual normal factor graph and demonstrate that they behave differently: they work particularly well at low temperatures. By comparing the relative error in estimating the partition function, we show that the proposed importance sampling algorithm significantly outperforms the state-of-the-art deterministic and Monte Carlo methods. For the ferromagnetic Ising model in an external field, we show the equivalence between the valid configurations in the dual normal factor graph and the terms that appear in the high-temperature series expansion of the partition function. Following this result, we discuss connections with Jerrum–Sinclair’s polynomial randomized approximation scheme (the subgraphs-world process) for evaluating the partition function of ferromagnetic Ising models.
机译:正态因子图对偶为图形模型中的蒙特卡洛算法提供了新的可能性。具体而言,我们考虑了通过蒙特卡罗方法估算铁磁Ising和Potts模型的分配函数的问题,已知该方法在高温下效果良好,但在低温下会失效。我们在对偶正态因子图中提出了蒙特卡洛方法(均匀采样和重要性采样),并证明它们的行为有所不同:它们在低温下效果特别好。通过比较估计分区函数中的相对误差,我们表明,所提出的重要性采样算法明显优于最新的确定性方法和蒙特卡洛方法。对于外部磁场中的铁磁伊辛模型,我们显示了对偶正态因子图中有效配置与分配函数的高温级数展开中出现的项之间的等价关系。根据这个结果,我们讨论了与Jerrum–Sinclair的多项式随机逼近方案(子图世界过程)的连接,用于评估铁磁Ising模型的分区函数。

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