Model-Independent Learning of Quantum Phases of Matter with Quantum Convolutional Neural Networks.

Journal: Physical review letters
Published Date:

Abstract

Quantum convolutional neural networks (QCNNs) have been introduced as classifiers for gapped quantum phases of matter. Here, we propose a model-independent protocol for training QCNNs to discover order parameters that are unchanged under phase-preserving perturbations. We initiate the training sequence with the fixed-point wave functions of the quantum phase and add translation-invariant noise that respects the symmetries of the system to mask the fixed-point structure on short length scales. We illustrate this approach by training the QCNN on phases protected by time-reversal symmetry in one dimension, and test it on several time-reversal symmetric models exhibiting trivial, symmetry-breaking, and symmetry-protected topological order. The QCNN discovers a set of order parameters that identifies all three phases and accurately predicts the location of the phase boundary. The proposed protocol paves the way toward hardware-efficient training of quantum phase classifiers on a programmable quantum processor.

Authors

  • Yu-Jie Liu
    Technical University of Munich, TUM School of Natural Sciences, Physics Department, 85748 Garching, Germany.
  • Adam Smith
    School of Physics and Astronomy, University of Nottingham, Nottingham NG7 2RD, United Kingdom.
  • Michael Knap
    Technical University of Munich, TUM School of Natural Sciences, Physics Department, 85748 Garching, Germany.
  • Frank Pollmann
    Technical University of Munich, TUM School of Natural Sciences, Physics Department, 85748 Garching, Germany.