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Marginal Densities, Factor Graph Duality, and High-Temperature Series Expansions

机译:边缘密度,因子图二元性和高温系列扩展

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We prove that the marginal densities of a global probability mass function in aprimal normal factor graph and the corresponding marginal densities in the dual normal factor graph are related via local mappings. The mapping depends on the Fourier transform of the local factors of the models. Details of the mapping, including its fixed points, are derived for the Ising model, and then extended to the Potts model. By employing the mapping, we can transform simultaneously all the estimated marginal densities from one domain to the other, which is advantageous if estimating the marginals can be carried out more efficiently in the dual domain.An example of particular significance is the ferromagnetic Ising model in a positive external field, for which there is a rapidly mixing Markov chain (called the subgraphs-world process) to generate configurations in the dual normal factor graph of the model. Our numerical experiments illustrate that the proposed procedure can provide more accurate estimates of marginal densities in various settings.
机译:我们证明了全球概率质量功能在四月正常因子图中的边缘密度和双正常因子图中的相应边缘密度通过本地映射相关。映射取决于模型的本地因素的傅立叶变换。映射的详细信息,包括其固定点,用于insing模型,然后扩展到Potts模型。通过采用映射,我们可以同时将来自一个域的所有估计的边际密度转换为另一个域,这是有利的,如果估计边际可以更有效地在双域中进行.AN的实例是铁磁ising模型积极的外部领域,其中有一个快速混合的马尔可夫链(称为子图 - 世界过程),以在模型的双正常因素图中产生配置。我们的数值实验说明了所提出的程序可以在各种环境中提供更准确的边际密度估计。

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