Revealing the Phase Diagram of Kitaev Materials by Machine Learning

ORAL

Abstract

Kitaev materials are promising materials for hosting quantum spin liquids and investigating the interplay of topological and symmetry-breaking phases. We use an unsupervised and interpretable machine-learning method, the tensorial-kernel support vector machine (TK-SVM), to study the phase diagram of candidate models for Kitaev materials. Our machine learns the global classical phase diagram for the honeycomb Kitaev-Γ model in a magnetic field and the associated order parameters, identifying several distinct spin liquids and unconventional orders. We find that the emergence of orders in the Kitaev-Γ model can be consistently explained by competition and cooperation between two spin liquids. We then apply our TK-SVM method to the Heisenberg-Kitaev-Γ model and discuss the effects of the Γ' and the J3 interaction.

*KL, NS, NR, JG, and LP acknowledge support from FP7/ERC Consolidator Grant QSIMCORR, No. 771891, and the Deutsche Forschungsgemeinschaft (DFG, German Research Foundation) under Germany's Excellence Strategy -- EXC-2111 -- 390814868.

Presenters

  • Ke Liu

    • Arnold Sommerfeld Center for Theoretical Physics, University of Munich
    • Ludwig Maximilian University of Munich

Authors

  • Ke Liu

    • Arnold Sommerfeld Center for Theoretical Physics, University of Munich
    • Ludwig Maximilian University of Munich
  • Nicolas Sadoune

    • Arnold Sommerfeld Center for Theoretical Physics, University of Munich
    • Ludwig Maximilian University of Munich
  • Nihal Rao

    • Ludwig Maximilian University of Munich
  • Jonas Greitemann

    • Ludwig Maximilian University of Munich
  • Lode Pollet

    • Arnold Sommerfeld Center for Theoretical Physics, University of Munich
    • Ludwig Maximilian University of Munich