Active Learning for Discovering Complex Phase Diagrams with Gaussian Processes

ORAL

Abstract

We introduce a Bayesian active learning algorithm that efficiently elucidates phase diagrams. Using a novel acquisition function that assesses both the impact and likelihood of the next observation, the algorithm iteratively determines the most informative next experiment to conduct and rapidly discerns the phase diagrams with multiple phases. Comparative studies against existing methods highlight the superior efficiency of our approach. We demonstrate the algorithm's practical application through the successful identification of the skyrmion phase in the Heisenberg model with antisymmetric interaction.

*This work is supported by the U.S. Department of Energy, Office of Science, Basic Energy Sciences under Award No. DE-SC0022216. Marcus Mynatt acknolwedges the support from University Scholar Program at University of Florida.

Presenters

  • Chunjing Jia

    • University of Florida

Authors

  • Chunjing Jia

    • University of Florida
  • Max Zhu

    • University of Cambridge
  • Jian Yao

    • Southern University of Science and Technology
  • Marcus Mynatt

    • University of Florida
  • Hubert Pugzlys

    • University of Florida
  • Shuyi Li

    • University of Florida
  • Sergio Bacallado

    • University of Cambridge
  • Qingyuan Zhao

    • University of Cambridge