Autoregressive neural quantum states of Fermi Hubbard models
ORAL
Abstract
Neural quantum states (NQS) have emerged as a powerful ansatz for variational quantum Monte Carlo studies of strongly-correlated systems. Here, we apply recurrent neural networks (RNNs) and autoregressive transformer neural networks to the Fermi-Hubbard and the (non-Hermitian) Hatano-Nelson-Hubbard models in one and two dimensions. In both cases, we observe that the convergence of the RNN ansatz is challenged when increasing the interaction strength. We present a physically-motivated and easy-to-implement strategy for improving the optimization, namely, by ramping of the model parameters. Furthermore, we investigate the advantages and disadvantages of the autoregressive sampling property of both network architectures. For the Hatano-Nelson-Hubbard model, we identify that the autoregressive, recurrent sampling scheme causes convergence difficulties that stem from the non-Hermitian nature of the model. Our findings provide insights into the challenges of the NQS approach, opening the door to exploring strongly-correlated electrons using this ansatz.
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Presenters
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Ehsan Khatami
San Jose State University
Authors
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Ehsan Khatami
San Jose State University
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Eduardo Ibarra Garcia Padilla
University of California, Davis
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Hannah Lange
LMU Munich, Chemistry Departement
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Roger G Melko
University of Waterloo, University of Waterloo, Perimeter Institute
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Richard Theodore Scalettar
University of California, Davis
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Juan Carrasquilla
ETH Zurich, ETH Zürich
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Annabelle Bohrdt
Harvard University, University of Regensburg, Munich Center for Quantum Science and Technology