论文标题
在受限的玻尔兹曼机器中编码的ISING模型的热力学
Thermodynamics of the Ising model encoded in restricted Boltzmann machines
论文作者
论文摘要
受限的玻尔兹曼机器(RBM)是一个基于两层能量的模型,它使用其隐藏可见的连接来学习可见单元的基本分布,可见单元的基础分布通常会因高阶相关性而变得复杂。先前对小型系统大小的ISING模型的研究表明,RBM能够准确地学习玻璃体分布并在远离临界点$ T_C $的温度下重建热量。但是,RBM如何编码Boltzmann分布并捕获相变的解释尚未得到很好的解释。在这项工作中,我们对$ 2D $和$ 3D $ ISING模型进行了RBM的学习,并仔细研究了RBM如何从Ising配置中提取有用的概率和物理信息。我们发现从权重矩阵得出的几个指标,这些指标可以表征Ising相变的特征。我们验证可见状态的隐藏编码倾向于具有相等数量的正和负单元,它们的顺序在训练过程中随机分配,并且可以通过分析重量矩阵来推断。我们还探讨了RBM的可见能量和损耗函数(伪样性)的物理含义,并表明它们可以被利用以预测临界点或估计物理量(例如熵)。
The restricted Boltzmann machine (RBM) is a two-layer energy-based model that uses its hidden-visible connections to learn the underlying distribution of visible units, whose interactions are often complicated by high-order correlations. Previous studies on the Ising model of small system sizes have shown that RBMs are able to accurately learn the Boltzmann distribution and reconstruct thermal quantities at temperatures away from the critical point $T_c$. How the RBM encodes the Boltzmann distribution and captures the phase transition are, however, not well explained. In this work, we perform RBM learning of the $2d$ and $3d$ Ising model and carefully examine how the RBM extracts useful probabilistic and physical information from Ising configurations. We find several indicators derived from the weight matrix that could characterize the Ising phase transition. We verify that the hidden encoding of a visible state tends to have an equal number of positive and negative units, whose sequence is randomly assigned during training and can be inferred by analyzing the weight matrix. We also explore the physical meaning of visible energy and loss function (pseudo-likelihood) of the RBM and show that they could be harnessed to predict the critical point or estimate physical quantities such as entropy.