In this paper with study phase transitions of the $q$-state Potts model, through a number of unsupervised machine learning techniques, namely Principal Component Analysis (PCA), $k$-means clustering, Uniform Manifold Approximation and Projection (UMAP), and Topological Data Analysis (TDA). Even though in all cases we are able to retrieve the correct critical temperatures $T_c(q)$, for $q = 3, 4$ and $5$, results show that non-linear methods as UMAP and TDA are less dependent on finite size effects, while still being able to distinguish between first and second order phase transitions. This study may be considered as a benchmark for the use of different unsupervised machine learning algorithms in the investigation of phase transitions.
翻译:在本文中,美元-州波茨模型的研究阶段过渡,通过若干不受监督的机器学习技术,即主元件分析(PCA),美元-平均值集成,统一门面相配和预测(UMAP)和地形数据分析(TDA),尽管我们在所有情况下都能够以3美元=3美元、4美元和5美元检索正确的临界温度$T_c(q),但结果显示,UMAP和TDA等非线性方法不那么依赖有限规模的影响,同时仍然能够区分第一和第二级过渡,这项研究可被视为在调查阶段过渡时使用不同不受监督的机器学习算法的基准。