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Main Authors: Wang, Dingzu, Zhang, Wenxuan, Xu, Xiansong, Poletti, Dario
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2507.08418
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author Wang, Dingzu
Zhang, Wenxuan
Xu, Xiansong
Poletti, Dario
author_facet Wang, Dingzu
Zhang, Wenxuan
Xu, Xiansong
Poletti, Dario
contents Neural quantum states are a promising framework for simulating many-body quantum dynamics, as they can represent states with volume-law entanglement. As time evolves, the neural network parameters are typically optimized at discrete time steps to approximate the wave function at each point in time. Given the differentiability of the wave function stemming from the Schrödinger equation, here we impose a time-continuous and differentiable parameterization of the neural network by expressing its parameters as linear combinations of temporal basis functions with trainable, time-independent coefficients. We test this ansatz, referred to as the smooth neural quantum state (\textit{s}-NQS) with a loss function defined over an extended time interval, under a sudden quench of a non-integrable many-body quantum spin chain. We demonstrate accurate time evolution using a restricted Boltzmann machine as the instantaneous neural network architecture. We show that the parameterization enables accurate simulations with fewer variational parameters, independent of time-step resolution. Furthermore, the smooth neural quantum state also allows us to initialize and evaluate the wave function at times not included in the training set, both within and beyond the training interval.
format Preprint
id arxiv_https___arxiv_org_abs_2507_08418
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Continuous-time parametrization of neural quantum states for quantum dynamics
Wang, Dingzu
Zhang, Wenxuan
Xu, Xiansong
Poletti, Dario
Quantum Physics
Strongly Correlated Electrons
Computational Physics
Neural quantum states are a promising framework for simulating many-body quantum dynamics, as they can represent states with volume-law entanglement. As time evolves, the neural network parameters are typically optimized at discrete time steps to approximate the wave function at each point in time. Given the differentiability of the wave function stemming from the Schrödinger equation, here we impose a time-continuous and differentiable parameterization of the neural network by expressing its parameters as linear combinations of temporal basis functions with trainable, time-independent coefficients. We test this ansatz, referred to as the smooth neural quantum state (\textit{s}-NQS) with a loss function defined over an extended time interval, under a sudden quench of a non-integrable many-body quantum spin chain. We demonstrate accurate time evolution using a restricted Boltzmann machine as the instantaneous neural network architecture. We show that the parameterization enables accurate simulations with fewer variational parameters, independent of time-step resolution. Furthermore, the smooth neural quantum state also allows us to initialize and evaluate the wave function at times not included in the training set, both within and beyond the training interval.
title Continuous-time parametrization of neural quantum states for quantum dynamics
topic Quantum Physics
Strongly Correlated Electrons
Computational Physics
url https://arxiv.org/abs/2507.08418