4.7 Article

Unsupervised Learning Universal Critical Behavior via the Intrinsic Dimension

Journal

PHYSICAL REVIEW X
Volume 11, Issue 1, Pages -

Publisher

AMER PHYSICAL SOC
DOI: 10.1103/PhysRevX.11.011040

Keywords

Condensed Matter Physics; Statistical Physics

Funding

  1. ERC [758329]
  2. Quantera program QTFLAG
  3. European Union's Horizon 2020 Research and Innovation Programme [817482]
  4. Cineca Supercomputing Centre through the Italian SuperComputing Resource Allocation [ICT20_CMSP]

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The study focuses on the intrinsic dimension of data sets near phase transitions, finding that it uniquely characterizes the transition regime in various cases. Finite-size analysis allows for accurate identification of critical points and determination of critical exponents, overcoming limitations of other unsupervised learning methods. The work reveals unique signatures of universal behavior in raw data sets and suggests a direct parallelism between conventional order parameters and intrinsic dimension.
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. 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.

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