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Empowering deep neural quantum states through efficient optimization

Physics

Empowering deep neural quantum states through efficient optimization

A. Chen and M. Heyl

Discover groundbreaking research by Ao Chen and Markus Heyl, introducing a minimum-step stochastic-reconfiguration optimization algorithm that enhances neural quantum states. This innovative approach successfully tackles complex quantum systems, achieving machine precision and revealing the secrets of gapless quantum-spin-liquid phases.... show more
Abstract
Computing the ground state of interacting quantum matter is a long-standing challenge, especially for complex two-dimensional systems. Recent developments have highlighted the potential of neural quantum states to solve the quantum many-body problem by encoding the many-body wavefunction into artificial neural networks. However, this method has faced the critical limitation that existing optimization algorithms are not suitable for training modern large-scale deep network architectures. Here, we introduce a minimum-step stochastic-reconfiguration optimization algorithm, which allows us to train deep neural quantum states with up to 10^6 parameters. We demonstrate our method for paradigmatic frustrated spin-1/2 models on square and triangular lattices, for which our trained deep networks approach machine precision and yield improved variational energies compared to existing results. Equipped with our optimization algorithm, we find numerical evidence for gapless quantum-spin-liquid phases in the considered models, an open question to date. We present a method that captures the emergent complexity in quantum many-body problems through the expressive power of large-scale artificial neural networks.
Publisher
Nature Physics
Published On
Jul 01, 2024
Authors
Ao Chen, Markus Heyl
Tags
neural quantum states
optimization algorithms
deep networks
quantum-spin-liquid
stochastic-reconfiguration
variational energies
spin-1/2 models
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