Machine learning of quantum phase transitions

POSTER

Abstract

Machine learning algorithms provide a new perspective on the study of physical phenomena. In this paper, we explore the nature of quantum phase transitions using multi-color convolutional neural-network (CNN) in combination with quantum Monte Carlo simulations. We propose a method that compresses (d + 1)-dimensional space-time configurations to a manageable size and then use them as the input for a CNN. We test our approach on two models and show that both continuous and discontinuous quantum phase transitions can be well detected and characterized. Moreover we show that intermediate phases, which were not trained, can also be identified using our approach.

Presenters

  • Xiaoyu Dong

    California State University, Northridge, USA, California state University, Northridge, USA

Authors

  • Xiaoyu Dong

    California State University, Northridge, USA, California state University, Northridge, USA

  • Xuefeng Zhang

    Chongqing University, Chongqing, People’s Republic of China, Department of Physics, Chongqing University

  • Frank Pollmann

    Technische Universität München, Garching, Germany, Technical University of Munich, Physics Department, Technical University of Munich, Technische Universität München, 85747 Garching, Germany