论文标题
U(1)量子状态重建的对称复发性神经网络
U(1) symmetric recurrent neural networks for quantum state reconstruction
论文作者
论文摘要
生成模型是增强量子模拟器的有前途的技术。这些机器学习方法能够从实验测量中重建量子状态,并可以帮助计算物理可观察物。在本文中,我们采用了一个经常性的神经网络(RNN)来重建Spin-1/2 XY模型的基态,Spin-1/2 XY模型是一种在被困的离子模拟器中探讨的典型的汉密尔顿。我们在执行U(1)对称性后探索其性能,这是Hibat-Allah等人最近显示的。 [物理。 Rev. Research 2,023358(2020)]保留RNN的自回归性质。通过从投影测量数据中研究XY模型基态的重建,我们表明,对RNN施加U(1)对称性会显着提高学习效率,尤其是在早期时期制度中。我们认为,这种性能的提高可能是由于强制对称性减轻消失和爆炸梯度的趋势而导致的,这有助于稳定训练过程。因此,对称性强制的RNN对于需要在优化和电路制备之间快速反馈的量子模拟器的应用中特别有用,例如在混合经典量子算法中。
Generative models are a promising technology for the enhancement of quantum simulators. These machine learning methods are capable of reconstructing a quantum state from experimental measurements, and can aid in the calculation of physical observables. In this paper, we employ a recurrent neural network (RNN) to reconstruct the ground state of the spin-1/2 XY model, a prototypical Hamiltonian explored in trapped ion simulators. We explore its performance after enforcing a U(1) symmetry, which was recently shown by Hibat-Allah et al. [Phys. Rev. Research 2, 023358 (2020)] to preserve the autoregressive nature of the RNN. By studying the reconstruction of the XY model ground state from projective measurement data, we show that imposing U(1) symmetry on the RNN significantly increases the efficiency of learning, particularly in the early epoch regime. We argue that this performance increase may result from the tendency of the enforced symmetry to alleviate vanishing and exploding gradients, which helps stabilize the training process. Thus, symmetry-enforced RNNs may be particularly useful for applications of quantum simulators where a rapid feedback between optimization and circuit preparation is necessary, such as in hybrid classical-quantum algorithms.