We use persistent homology and persistence images as an observable of three different variants of the two-dimensional XY model in order to identify and study their phase transitions. We examine models with the classical XY action, a topological lattice action, and an action with an additional nematic term. In particular, we introduce a new way of computing the persistent homology of lattice spin model configurations and, by considering the fluctuations in the output of logistic regression and k-nearest neighbours models trained on persistence images, we develop a methodology to extract estimates of the critical temperature and the critical exponent of the correlation length. We put particular emphasis on finite-size scaling behaviour and producing estimates with quantifiable error. For each model we successfully identify its phase transition(s) and are able to get an accurate determination of the critical temperatures and critical exponents of the correlation length.
翻译:我们用持久性同系物和持久性图像观察二维XY模型的三种不同变体,以便确定和研究其阶段过渡。我们用经典XY动作、一个表层拉式动作和另外一个线性术语来审查模型。特别是,我们采用了一种新的方法来计算长线旋转模型配置的持久性同系物。我们通过考虑物流回归和K-近距离邻居耐久图像培训模型输出的波动,制定了一种方法来提取关键温度和相关长度关键指数的估计值。我们特别强调定型缩放行为,用量化错误来提出估计值。我们成功地确定了每个模型的阶段过渡,并能够准确确定相关长度的关键温度和关键指数。