Unsupervised learning of topological phase transitions using the Calinski-Harabaz index

Jie-Ming Wang, Wanzhou Zhang, Tian Hua, T. Wei
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引用次数: 23

Abstract

Machine learning methods have been recently applied to learning phases of matter and transitions between them. Of particular interest is the topological phase transition, such as in the XY model, which can be difficult for unsupervised learning such as the principal component analysis. Recently, authors of [Nature Physics \textbf{15},790 (2019)] employed the diffusion-map method for identifying topological order and were able to determine the BKT phase transition of the XY model, specifically via the intersection of the average cluster distance $\bar{D}$ and the within cluster dispersion $\bar\sigma$ (when the different clusters vary from separation to mixing together). However, sometimes it is not easy to find the intersection if $\bar{D}$ or $\bar{\sigma}$ does not change too much due to topological constraint. In this paper, we propose to use the Calinski-Harabaz ($ch$) index, defined roughly as the ratio $\bar D/\bar \sigma$, to determine the critical points, at which the $ch$ index reaches a maximum or minimum value, or jump sharply. We examine the $ch$ index in several statistical models, including ones that contain a BKT phase transition. For the Ising model, the peaks of the quantity $ch$ or its components are consistent with the position of the specific heat maximum. For the XY model both on the square lattices and honeycomb lattices, our results of the $ch$ index show the convergence of the peaks over a range of the parameters $\varepsilon/\varepsilon_0$ in the Gaussian kernel. We also examine the generalized XY model with $q=2$ and $q=8$ and at the value away from the pure XY limit. Our method is thus useful to both topological and non-topological phase transitions and can achieve accuracy as good as supervised learning methods previously used in these models, and may be used for searching phases from experimental data.
使用Calinski-Harabaz指数的拓扑相变的无监督学习
机器学习方法最近被应用于学习物质的阶段和它们之间的过渡。特别令人感兴趣的是拓扑相变,例如在XY模型中,这对于主成分分析等无监督学习可能是困难的。最近,[Nature Physics \textbf{15,790}(2019)]的作者采用扩散图方法来识别拓扑顺序,并能够确定XY模型的BKT相变,特别是通过平均簇距离$\bar{D}$和簇内色散$\bar\sigma$的交集(当不同的簇从分离到混合在一起时)。然而,有时由于拓扑约束,如果$\bar{D}$或$\bar{\sigma}$变化不大,则不容易找到交集。在本文中,我们建议使用Calinski-Harabaz ($ch$)指数来确定$ch$指数达到最大值或最小值或急剧跳跃的临界点,该指数大致定义为比率$\bar D/\bar \sigma$。我们在几个统计模型中检查$ch$指数,包括那些包含BKT相变的模型。在Ising模型中,数量$ch$或其组成部分的峰值与比热最大值的位置一致。对于正方形格和蜂窝格上的XY模型,我们的$ch$指数结果显示高斯核中在参数$\varepsilon/\varepsilon_0$范围内的峰值收敛。我们还用$q=2$和$q=8$考察了广义XY模型,并在远离纯XY极限的值处进行了检验。因此,我们的方法对拓扑和非拓扑相变都很有用,并且可以达到与之前在这些模型中使用的监督学习方法一样好的准确性,并且可以用于从实验数据中搜索相位。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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