PhysicsNature 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.
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