Neural loop algorithm for square ice model

ORAL

Abstract

We discuss how to apply a reinforcement learning framework on the square spin ice model. Spin ice is a frustrated magnetic system with a strong topological constraint on the low-energy configurations called the ice rule. The conventional single spin-flip Monte Carlo update breaks this constraint. We exploit a reinforcement learning method that parameterizes the transition operator with neural networks. By extending the Markov chain to a Markov decision process, the algorithm can adaptively search for a global update policy through its interactions with the physical model. We find that the global loop update emerges without the explicit knowledge of the ice rule. This method might serve a general framework to search for efficient update policies in other constrained systems.

*This work is supported by MOST of Taiwan under Grants No. 105-2112-M-002-023-MY3, and 104-2112-M-002-022-MY3.

Presenters

  • Ying-Jer Kao

    • Department of Physics, National Taiwan University
    • National Taiwan University
    • Physics, National Taiwan University

Authors

  • Ying-Jer Kao

    • Department of Physics, National Taiwan University
    • National Taiwan University
    • Physics, National Taiwan University
  • Kai-Wen Zhao

    • National Taiwan University
  • Wen-Han Kao

    • National Taiwan University