Extending Machine Learning to Fermion–Boson Coupled Systems and Excited-State Calculations
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Machine Learning Quantum States — Extensions to Fermion–Boson Coupled Systems and Excited-State Calculations
(JPSJ Editors' Choice)
J. Phys. Soc. Jpn. 89, 054706 (2020).
We have demonstrated the power of machine learning in representing quantum many-body states accurately. We have extended the applicability of neural-network wave functions and shown their usefulness in fermion-boson-coupled systems and excited-state calculations.
Machine Learning Quantum States — Extensions to Fermion–Boson Coupled Systems and Excited-State Calculations
(JPSJ Editors' Choice)
J. Phys. Soc. Jpn. 89, 054706 (2020).
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