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

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

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.

MeSH Term

Learning
Neural Networks, Computer

Word Cloud

Created with Highcharts 10.0.0quantumtrainingQuantumphasesorderphaseQCNNsclassifiersprotocolparametersfixed-pointQCNNtime-reversalconvolutionalneuralnetworksintroducedgappedmatterproposemodel-independentdiscoverunchangedphase-preservingperturbationsinitiatesequencewavefunctionsaddtranslation-invariantnoiserespectssymmetriessystemmaskstructureshortlengthscalesillustrateapproachprotectedsymmetryonedimensiontestseveralsymmetricmodelsexhibitingtrivialsymmetry-breakingsymmetry-protectedtopologicaldiscoverssetidentifiesthreeaccuratelypredictslocationboundaryproposedpaveswaytowardhardware-efficientprogrammableprocessorModel-IndependentLearningPhasesMatterConvolutionalNeuralNetworks

Similar Articles

Cited By