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.
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Presenters
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Ke Liu
Arnold Sommerfeld Center for Theoretical Physics, University of Munich, Ludwig Maximilian University of Munich
Authors
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Ke Liu
Arnold Sommerfeld Center for Theoretical Physics, University of Munich, Ludwig Maximilian University of Munich
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Nicolas Sadoune
Arnold Sommerfeld Center for Theoretical Physics, University of Munich, Ludwig Maximilian University of Munich
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Nihal Rao
Ludwig Maximilian University of Munich
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Jonas Greitemann
Ludwig Maximilian University of Munich
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Lode Pollet
Arnold Sommerfeld Center for Theoretical Physics, University of Munich, Ludwig Maximilian University of Munich