TY - JOUR
T1 - Machine learning quantum states — extensions to fermion–boson coupled systems and excited-state calculations
AU - Nomura, Yusuke
N1 - Funding Information:
Acknowledgment We are grateful for fruitful discussions with Kenny Choo, Giuseppe Carleo, Takahiro Ohgoe, Masatoshi Imada, and Youhei Yamaji. In particular, we thank Kenny Choo and Takahiro Ohgoe for providing us the raw data in Refs. 29 and 41, respectively. The implementation of the machine-learning method is done based on the mVMC package.52) This work was supported by Grant-in-Aids for Scientific Research (JSPS KAKENHI) (Grants Nos. 16H06345, 17K14336, and 18H01158).
Publisher Copyright:
© 2020 Society The Author(s) of Japan
PY - 2020/5/15
Y1 - 2020/5/15
N2 - To analyze quantum many-body Hamiltonians, recently, machine learning techniques have been shown to be quite useful and powerful. However, the applicability of such machine learning solvers is still limited. Here, we propose schemes that make it possible to apply machine learning techniques to analyze fermion–boson coupled Hamiltonians and to calculate excited states. As for the extension to fermion–boson coupled systems, we study the Holstein model as a representative of the fermion–boson coupled Hamiltonians. We show that the machine-learning solver achieves highly accurate ground-state energy, improving the accuracy substantially compared to that obtained by the variational Monte Carlo method. As for the calculations of excited states, we propose a different approach than that proposed in Choo et al., Phys. Rev. Lett. 121, 167204 (2018). We discuss the difference in detail and compare the accuracy of two methods using the one-dimensional S = 1=2 Heisenberg chain. We also show the benchmark for the frustrated two-dimensional S = 1=2 J1–J2 Heisenberg model and show an excellent agreement with the results obtained by the exact diagonalization. The extensions shown here open a way to analyze general quantum many-body problems using machine learning techniques.
AB - To analyze quantum many-body Hamiltonians, recently, machine learning techniques have been shown to be quite useful and powerful. However, the applicability of such machine learning solvers is still limited. Here, we propose schemes that make it possible to apply machine learning techniques to analyze fermion–boson coupled Hamiltonians and to calculate excited states. As for the extension to fermion–boson coupled systems, we study the Holstein model as a representative of the fermion–boson coupled Hamiltonians. We show that the machine-learning solver achieves highly accurate ground-state energy, improving the accuracy substantially compared to that obtained by the variational Monte Carlo method. As for the calculations of excited states, we propose a different approach than that proposed in Choo et al., Phys. Rev. Lett. 121, 167204 (2018). We discuss the difference in detail and compare the accuracy of two methods using the one-dimensional S = 1=2 Heisenberg chain. We also show the benchmark for the frustrated two-dimensional S = 1=2 J1–J2 Heisenberg model and show an excellent agreement with the results obtained by the exact diagonalization. The extensions shown here open a way to analyze general quantum many-body problems using machine learning techniques.
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U2 - 10.7566/JPSJ.89.054706
DO - 10.7566/JPSJ.89.054706
M3 - Article
AN - SCOPUS:85085377677
SN - 0031-9015
VL - 89
JO - Journal of the Physical Society of Japan
JF - Journal of the Physical Society of Japan
IS - 5
M1 - 054706
ER -