Machine Learning Phase Transition: An Iterative Proposal
X. L. Zhao, L. B. Fu

TL;DR
This paper introduces an iterative machine learning approach combining dimensionality reduction and neural networks to accurately estimate critical points in statistical models, demonstrated on Potts models with different phase transition types.
Contribution
It presents a novel iterative framework that integrates dimensionality reduction and neural networks for phase transition detection in statistical models.
Findings
Neural networks effectively identify phase boundaries.
The method converges to accurate critical temperature estimates.
The approach distinguishes between different types of phase transitions.
Abstract
We propose an iterative proposal to estimate critical points for statistical models based on configurations by combing machine-learning tools. Firstly, phase scenarios and preliminary boundaries of phases are obtained by dimensionality-reduction techniques. Besides, this step not only provides labelled samples for the subsequent step but also is necessary for its application to novel statistical models. Secondly, making use of these samples as training set, neural networks are employed to assign labels to those samples between the phase boundaries in an iterative manner. Newly labelled samples would be put in the training set used in subsequent training and the phase boundaries would be updated as well. The average of the phase boundaries is expected to converge to the critical temperature in this proposal. In concrete examples, we implement this proposal to estimate the critical…
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