Machine learning vortices at the Kosterlitz-Thouless transition

paper
Published

January 25, 2018

Info

This work was my project in the “Theoretical Physics Bootcamp” program at Perimeter Institute and my very fist acquaintance with ML. Published as Editors’ Suggestion in PRB.

Authors

Matthew J. S. Beach, Anna Golubeva, and Roger G. Melko

Abstract

Efficient and automated classification of phases from minimally processed data is one goal of machine learning in condensed-matter and statistical physics. Supervised algorithms trained on raw samples of microstates can successfully detect conventional phase transitions via learning a bulk feature such as an order parameter. In this paper, we investigate whether neural networks can learn to classify phases based on topological defects. We address this question on the two-dimensional classical XY model which exhibits a Kosterlitz-Thouless transition. We find significant feature engineering of the raw spin states is required to convincingly claim that features of the vortex configurations are responsible for learning the transition temperature. We further show a single-layer network does not correctly classify the phases of the XY model, while a convolutional network easily performs classification by learning the global magnetization. Finally, we design a deep network capable of learning vortices without feature engineering. We demonstrate the detection of vortices does not necessarily result in the best classification accuracy, especially for lattices of less than approximately 1000 spins. For larger systems, it remains a difficult task to learn vortices.

Talk

I presented this work at the March Meeting 2018 in LA and at the mpipks workshop “Machine Learning for Quantum Many-body Physics” in Dresden. However, there are no recordings of these talks.