Characterization of photoexcited states in the half-filled one-dimensional extended Hubbard model assisted by machine learning
ORAL
Abstract
Photoinduced nonequilibrium states can provide new insight into dynamical properties of strongly correlated electron systems. One of the typical and extensively studied systems is the half-filled one-dimensional extended Hubbard model (1DEHM). Here, we propose that the supervised machine learning (ML) can provide useful information for characterizing photoexcited states in 1DEHM [1]. Using entanglement spectra as a training dataset, we construct a neural network. Judging from the trained network, we find that bond-spin-density wave (BSDW) order can be enhanced in photoexcited states if the frequency of a driving pulse nearly resonates with a gap. We separately calculate the time evolution of local and non-local order parameters and confirm that the correlation functions of BSDW are enhanced by photoexcitation as predicted by ML. Predicting BSDW demonstrates the advantage of ML to assist characterizing photoexcited quantum states.
[1] K. Shinjo, S. Sota, S. Yunoki, and T. Tohyama, arXiv: 1901.07900.
[1] K. Shinjo, S. Sota, S. Yunoki, and T. Tohyama, arXiv: 1901.07900.
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Presenters
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Kazuya Shinjo
Tokyo Univ of Science, Katsushika
Authors
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Kazuya Shinjo
Tokyo Univ of Science, Katsushika
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Shigetoshi Sota
RIKEN, RIKEN Center for Computational Science
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Seiji Yunoki
RIKEN, RIKEN Center for Computational Science
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Takami Tohyama
Tokyo Univ of Science, Katsushika, Tokyo University of Science