Learning quantum properties from short-range correlations using multi-task networks

ORAL

Abstract

Characterizing multipartite quantum systems is crucial for quantum computing and many-body physics. The problem, however, becomes challenging when the system size is large and the properties of interest involve correlations among a large number of particles. Here we introduce a neural network model that can predict various quantum properties of many-body quantum states with constant correlation length, using only measurement data from a small number of neighboring sites. The model is based on the technique of multi-task learning, which we show to offer several advantages over traditional single-task approaches. Through numerical experiments, we show that multi-task learning can be applied to sufficiently regular states to predict global properties, like string order parameters, from the observation of short-range correlations, and to distinguish between quantum phases that cannot be distinguished by single-task networks. Remarkably, our model appears to be able to transfer information learnt from lower dimensional quantum systems to higher dimensional ones, and to make accurate predictions for Hamiltonians that were not seen in the training.

*This work was supported by funding from the Hong Kong Research Grant Council through grants no. 17300918 and no. 17307520, through the Senior Research Fellowship Scheme SRFS2021-7S02, the Chinese Ministry of Science and Education through grant 2023ZD0300600, and the John Templeton Foundation through grant 62312, The Quantum Information Structure of Spacetime (qiss.fr). YDW acknowledges funding from the National Natural Science Foundation of China through grants no. 12405022. YXW acknowledges funding from the National Natural Science Foundation of China through grants no. 61872318. Research at the Perimeter Institute is supported by the Government of Canada through the Department of Innovation, Science and Economic Development Canada and by the Province of Ontario through the Ministry of Research, Innovation and Science.

Publication: arXiv:2310.11807

Presenters

  • Ya-Dong Wu

    • Shanghai Jiao Tong University
    • Shanghai Jiao Tong Univ

Authors

  • Ya-Dong Wu

    • Shanghai Jiao Tong University
    • Shanghai Jiao Tong Univ
  • Yan Zhu

    • The University of Hong Kong
  • Yuexuan Wang

    • The University of Hong Kong
  • Giulio Chiribella

    • The University of Hong Kong