While one-dimensional Markov processes are well understood, going to higher dimensions there are only a few analytically solved Ising-like models, in practice requiring to use relatively costly, uncontrollable and inaccurate Monte-Carlo methods. There is discussed analytical approach for e.g. $width\times \infty$ approximation of lattice, also exploiting Hammersley-Clifford theorem to generate random Gibbs/Markov field through scanning line-by-line using local statistical model as in lossless image compression. While its conditional distributions could be found with Monte-Carlo methods, there is discussed use of Maximal Entropy Random Walk (MERW) to calculate them from approximation of lattice as infinite in one direction and finite in the remaining. Specifically, in the finite directions there is built alphabet of all patterns, then transition matrix containing energy for all pairs of such patterns is built, from its dominant eigenvector getting probability distribution of pairs of patterns in Boltzmann distribution of their infinite sequences, which can be translated into local statistical model for line-by-line scan. Such inexpensive models, requiring seconds on a laptop for attached implementation and directly providing probability distributions of patterns, were tested for mean entropy and energy per node, getting maximal $\approx 0.02$ error from analytical solution near critical point, which quickly improves to extremely accurate e.g. $\approx 10^{-10}$ error for $J\approx 0.2$.
翻译:虽然对一维的Markov进程有很好的理解,但进入更高维度时,只有少数分析解决的Ising类似模型,实际上需要使用相对昂贵、无法控制和不准确的Monte-Carlo方法。讨论的分析性方法有,例如,用美元维度/美元近似拉特斯,还利用Hammersley-Cliffford 理论来利用当地统计模型,以无损图像压缩的形式逐行扫描Gibb/Markov字段。虽然可以用Monte-Carlo方法找到有条件的分布,但讨论使用Maxal Entropro Rental Walk (MEW) 来计算这些模型,从拉蒂斯近一个方向的无穷无穷无穷无穷无穷的近点计算。具体地,在有限的方向上,所有模式的型号都建起了含有能量的过渡矩阵,从主要的 Egenvercentctors 得到波尔茨曼分布模式的概率分布,这些无限序列可以被翻译成本地统计模型, $x 美元近端扫描。这种精确度模型需要直接测试的概率模型, 10美元 和10美元正值的膝(tro) 。