Non-parametric learning critical behavior in Ising partition functions: PCA entropy and intrinsic dimension

Author:

Panda Rajat K.123,Verdel Roberto1,Rodriguez Alex14,Sun Hanlin56,Bianconi Ginestra57,Dalmonte Marcello13

Affiliation:

1. Abdus Salam International Centre for Theoretical Physics

2. INFN Trieste

3. International School for Advanced Studies

4. University of Trieste

5. Queen Mary University of London

6. Nordic Institute for Theoretical Physics

7. The Alan Turing Institute

Abstract

We provide and critically analyze a framework to learn critical behavior in classical partition functions through the application of non-parametric methods to data sets of thermal configurations. We illustrate our approach in phase transitions in 2D and 3D Ising models. First, we extend previous studies on the intrinsic dimension of 2D partition function data sets, by exploring the effect of volume in 3D Ising data. We find that as opposed to 2D systems for which this quantity has been successfully used in unsupervised characterizations of critical phenomena, in the 3D case its estimation is far more challenging. To circumvent this limitation, we then use the principal component analysis (PCA) entropy, a “Shannon entropy” of the normalized spectrum of the covariance matrix. We find a striking qualitative similarity to the thermodynamic entropy, which the PCA entropy approaches asymptotically. The latter allows us to extract-through a conventional finite-size scaling analysis with modest lattice sizes-the critical temperature with less than 1% error for both 2D and 3D models while being computationally efficient. The PCA entropy can readily be applied to characterize correlations and critical phenomena in a huge variety of many-body problems and suggests a (direct) link between easy-to-compute quantities and entropies.

Funder

Ministerio de Ciencia e Innovación

Ministero dell'Università e della Ricerca

Ministero dell’Istruzione, dell’Università e della Ricerca

Publisher

Stichting SciPost

Subject

Statistical and Nonlinear Physics,Atomic and Molecular Physics, and Optics,Nuclear and High Energy Physics,Condensed Matter Physics

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