4.6 Article

Machine learning by unitary tensor network of hierarchical tree structure

Journal

NEW JOURNAL OF PHYSICS
Volume 21, Issue -, Pages -

Publisher

IOP Publishing Ltd
DOI: 10.1088/1367-2630/ab31ef

Keywords

quantum machine learning; tensor networks; quantum many-body

Funding

  1. National Natural Science Key Foundation of China [61433015]
  2. Science&Technology Development Fund of Tianjin Education Commission for Higher Education [2018KJ217]
  3. China Scholarship Council [201609345008]
  4. Spanish Ministry of Economy and Competitiveness (Severo Ochoa Programme for Centres of Excellence in RD) [SEV-2015-0522]
  5. Fundacio Privada Cellex
  6. Generalitat de Catalunya CERCA Programme
  7. ERC AdG OSYRIS (ERC-2013-AdG) [339106]
  8. Spanish MINECO grant FOQUS [FIS2013-46768-P]
  9. Spanish MINECO grant FISICATEAMO [FIS2016-79508-P]
  10. NSFC [11834014]
  11. Beijing Natural Science Foundation [1192005, Z180013]
  12. ERC (Consolidator Grant QITBOX)
  13. MOST of China [2018FYA0305800]
  14. Strategic Priority Research Program of the Chinese Academy of Sciences [XDB28000000, XDB07010100]
  15. ICFO
  16. Perimeter Institute for Theoretical Physics
  17. Government of Canada through Industry Canada
  18. Province of Ontario through the Ministry of Economic Development and Innovation
  19. QIBEQI [FIS2016-80773-P]
  20. UCAS
  21. Catalan AGAUR [SGR 874, SGR 1341]
  22. EU FETPRO QUIC
  23. EU EQuaM [323714]

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The resemblance between the methods used in quantum-many body physics and in machine learning has drawn considerable attention. In particular, tensor networks (TNs) and deep learning architectures bear striking similarities to the extent that TNs can be used for machine learning. Previous results used one-dimensional TNs in image recognition, showing limited scalability and flexibilities. In this work, we train two-dimensional hierarchical TNs to solve image recognition problems, using a training algorithm derived from the multi-scale entanglement renormalization ansatz. This approach introduces mathematical connections among quantum many-body physics, quantum information theory, and machine learning. While keeping the TN unitary in the training phase, TN states are defined, which encode classes of images into quantum many-body states. We study the quantum features of the TN states, including quantum entanglement and fidelity. We find these quantities could be properties that characterize the image classes, as well as the machine learning tasks.

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