Study of the Berezinskii-Kosterlitz-Thouless transition: An unsupervised machine learning approach
Sumit Haldar, Sk Saniur Rahaman, and Manoranjan Kumar

TL;DR
This paper employs an unsupervised machine learning method, PCA, to accurately estimate the BKT transition temperature in various magnetic models, overcoming limitations of previous approaches.
Contribution
It introduces a PCA-based approach using vorticities as input to precisely determine the BKT transition temperature in complex magnetic systems.
Findings
PCA with vorticities accurately estimates T_BKT.
Method successfully distinguishes close phase transitions.
Applicable to both square and triangular lattice models.
Abstract
The Berezinskii-Kosterlitz-Thouless (BKT) transition in magnetic system is an intriguing phenomena and an accurate estimation of the BKT transition temperature has been a long-standing problem. In this work we explore the anisotropic classical Heisenberg XY and XXZ models with ferromagnetic exchange on a square lattice and antiferromagnetic exchange on a triangular lattice using an unsupervised machine learning approach called principal component analysis (PCA). In earlier studies of the BKT transition, spin configurations and vorticities calculated from Monte Carlo method are used to determine the transition temperature , but those methods fail to give any conclusive results by analyzing the principal components in the PCA approach. In this work vorticities are used as initial input to the PCA and curve of the first principal component with temperature is fitted with a…
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Taxonomy
TopicsTheoretical and Computational Physics · Complex Systems and Time Series Analysis · Quantum many-body systems
