用受限玻尔兹曼机识别产品订单

W. Rao, Zhenyu Li, Q. Zhu, Mingxing Luo, Xin Wan
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引用次数: 24

摘要

基于受限玻尔兹曼机的无监督机器学习是区分有序相位和无序相位的有效工具。本文研究了该方法在含部分有序积相的二维Ashkin-Teller模型上的应用。我们用蒙特卡罗模拟生成的自旋组态数据训练神经网络,并表明可以从对称破缺引起的非遍历样本中学习到产物相的明显特征。对权重矩阵的仔细分析启发我们定义了一个产品形式的非平凡机器学习驱动量,它类似于传统的产品顺序参数。
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Identifying Product Order with Restricted Boltzmann Machines
Unsupervised machine learning via a restricted Boltzmann machine is an useful tool in distinguishing an ordered phase from a disordered phase. Here we study its application on the two-dimensional Ashkin-Teller model, which features a partially ordered product phase. We train the neural network with spin configuration data generated by Monte Carlo simulations and show that distinct features of the product phase can be learned from non-ergodic samples resulting from symmetry breaking. Careful analysis of the weight matrices inspires us to define a nontrivial machine-learning motivated quantity of the product form, which resembles the conventional product order parameter.
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