Continuous-variable optimization with neural network quantum states

被引:0
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作者
Yabin Zhang
David Gorsich
Paramsothy Jayakumar
Shravan Veerapaneni
机构
[1] University of Michigan,Department of Mathematics
[2] U.S. Army DEVCOM,Ground Vehicle Systems Center
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关键词
Neural quantum states; Quantum information; Graph theory; Quantum rotors;
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摘要
Inspired by proposals for continuous-variable quantum approximate optimization (CV-QAOA), we investigate the utility of continuous-variable neural network quantum states (CV-NQS) for performing continuous optimization, focusing on the ground state optimization of the classical antiferromagnetic rotor model. Numerical experiments conducted using variational Monte Carlo with CV-NQS indicate that although the non-local algorithm succeeds in finding ground states competitive with the local gradient search methods, the proposal suffers from unfavorable scaling. A number of proposed extensions are put forward which may help alleviate the scaling difficulty.
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