Scalable imaginary time evolution with neural network quantum states
被引:5
|
作者:
Ledinauskas, Eimantas
论文数: 0引用数: 0
h-index: 0
机构:
Vilnius Univ, Inst Theoret Phys & Astron, Sauletekio Al 3, LT-10257 Vilnius, Lithuania
Baltic Inst Adv Technol, Pilies St 16-8, LT-01403 Vilnius, LithuaniaVilnius Univ, Inst Theoret Phys & Astron, Sauletekio Al 3, LT-10257 Vilnius, Lithuania
Ledinauskas, Eimantas
[1
,2
]
Anisimovas, Egidijus
论文数: 0引用数: 0
h-index: 0
机构:
Vilnius Univ, Inst Theoret Phys & Astron, Sauletekio Al 3, LT-10257 Vilnius, LithuaniaVilnius Univ, Inst Theoret Phys & Astron, Sauletekio Al 3, LT-10257 Vilnius, Lithuania
Anisimovas, Egidijus
[1
]
机构:
[1] Vilnius Univ, Inst Theoret Phys & Astron, Sauletekio Al 3, LT-10257 Vilnius, Lithuania
[2] Baltic Inst Adv Technol, Pilies St 16-8, LT-01403 Vilnius, Lithuania
来源:
SCIPOST PHYSICS
|
2023年
/
15卷
/
06期
关键词:
MONTE-CARLO;
GAME;
GO;
D O I:
10.21468/SciPostPhys.15.6.229
中图分类号:
O4 [物理学];
学科分类号:
0702 ;
摘要:
The representation of a quantum wave function as a neural network quantum state (NQS) provides a powerful variational ansatz for finding the ground states of many-body quantum systems. Nevertheless, due to the complex variational landscape, traditional methods often employ the computation of quantum geometric tensor, consequently complicating optimization techniques. Contributing to efforts aiming to formulate alternative methods, we introduce an approach that bypasses the computation of the metric tensor and instead relies exclusively on first-order gradient descent with Euclidean metric. This allows for the application of larger neural networks and the use of more standard optimization methods from other machine learning domains. Our approach leverages the principle of imaginary time evolution by constructing a target wave function derived from the Schrodinger equation, and then training the neural network to approximate this target. We make this method adaptive and stable by determining the optimal time step and keeping the target fixed until the energy of the NQS decreases. We demonstrate the benefits of our scheme via numerical experiments with 2D J1-J2 Heisenberg model, which showcase enhanced stability and energy accuracy in comparison to direct energy loss minimization. Importantly, our approach displays competitiveness with the wellestablished density matrix renormalization group method and NQS optimization with stochastic reconfiguration.