• Corpus ID: 238744363

Machine learning for percolation utilizing auxiliary Ising variables

@inproceedings{Zhang2021MachineLF,
  title={Machine learning for percolation utilizing auxiliary Ising variables},
  author={Junyi Zhang and Bo Zhang and Junyi Xu and Wanzhou Zhang and Youjin Deng},
  year={2021}
}
Junyin Zhang, ∗ Bo Zhang, ∗ Junyi Xu, Wanzhou Zhang, 2, † and Youjin Deng 4, 5, ‡ Hefei National Laboratory for Physical Sciences at the Microscale and Department of Modern Physics, University of Science and Technology of China, Hefei 230026, China College of Physics and Optoelectronics, Taiyuan University of Technology, Shanxi 030024, China CAS Key Laboratory of Quantum Information, University of Science and Technology of China Shanghai Research Center for Quantum Sciences, Shanghai 201315… 

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