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Unsupervised Learning Universal Critical Behavior via the Intrinsic Dimension

机译:通过内在维度无监督学习普遍的关键行为

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The identification of universal properties from minimally processed data sets is one goal of machine learning techniques applied to statistical physics. Here, we study how the minimum number of variables needed to accurately describe the important features of a data set—the intrinsic dimension ( I d )—behaves in the vicinity of phase transitions. We employ state-of-the-art nearest-neighbors-based I d estimators to compute the I d of raw Monte?Carlo thermal configurations across different phase transitions: first-order, second-order, and Berezinskii-Kosterlitz-Thouless. For all the considered cases, we find that the I d uniquely characterizes the transition regime. The finite-size analysis of the I d allows us to not only identify critical points with an accuracy comparable to methods that rely on a?priori identification of order parameters but also to determine the corresponding (critical) exponent ν in the case of continuous transitions. For the case of topological transitions, this analysis overcomes the reported limitations affecting other unsupervised learning methods. Our work reveals how raw data sets display unique signatures of universal behavior in the absence of any dimensional reduction scheme and suggest direct parallelism between conventional order parameters in real space and the intrinsic dimension in the data space.
机译:从最小处理的数据集识别来自最微量处理的数据集是应用于统计物理学的机器学习技术的一个目标。在这里,我们研究了如何准确地描述数据集的重要特征所需的最小变量 - 在相位过渡附近的内在尺寸(i d)-behaves。我们采用最先进的最近邻居的I D估计器来计算跨不同相变的蒙特的I D:一阶,二阶和Berezinskii-Kosterlitz-Thousless。对于所有被认为的案例,我们发现I D唯一地表征过渡制度。 I D的有限尺寸分析允许我们不仅可以识别与依赖于a的方法的准确性的关键点?在持续的订单参数的先验识别,而且在连续转换的情况下确定相应的(至关重要的)指数ν 。对于拓扑过渡的情况,该分析克服了影响其他无监督学习方法的报告的局限性。我们的工作揭示了RAW数据集在没有任何维度减少方案的情况下在没有任何维度减少方案的情况下显示普遍行为的独特签名,并在现实空间中的传统订单参数与数据空间中的内在尺寸之间建议直接并行性。

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