We present local mappings that relate the marginal probabilities of a global probability mass function represented by its primal normal factor graph to the corresponding marginal probabilities in its dual normal factor graph. The mapping is based on the Fourier transform of the local factors of the models. Details of the mapping are provided for the Ising model, where it is proved that the local extrema of the fixed points are attained at the phase transition of the two-dimensional nearest-neighbor Ising model. The results are further extended to the Potts model, to the clock model, and to Gaussian Markov random fields. By employing the mapping, we can transform simultaneously all the estimated marginal probabilities from the dual domain to the primal domain (and vice versa), 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 magnetic field. For this model, there exists 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 probabilities of a global probability mass function in various settings.
翻译:我们展示了本地映射,将全球概率质量函数的边际概率概率与其原始正常系数图中相应的边际概率比。映射以模型本地因子的Fourier变换为基础。映射详情提供给Ising模型,该模型证明,在二维近邻Ising模型的两维过渡阶段,固定点的局部边缘值是达到的。结果进一步扩展至波茨模型、时钟模型和Gaussian Markov随机字段。通过映射,我们可以同时将所有估计的边际概率从双域转换为原始域(反之亦然),如果估算边缘值可以在双域中更有效地进行,则具有优势。一个特别重要的例子是,在积极的外部磁场中,铁磁性Ising模型。对于这一模型,存在着一种快速混合的马尔科夫链(称为子仪表-世界进程),以在模型的双正常因子要素图中生成配置组合。我们的数字实验显示,在模型中,一个更精确性的全球概率模型中,可以提供一种更精确的模型。