Quantum Entanglement in Neural Network States

D. Deng, Xiaopeng Li, Xiaopeng Li, S. Sarma
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引用次数: 320

Abstract

Machine learning, one of today's most rapidly growing interdisciplinary fields, promises an unprecedented perspective for solving intricate quantum many-body problems. Understanding the physical aspects of the representative artificial neural-network states is recently becoming highly desirable in the applications of machine learning techniques to quantum many-body physics. Here, we study the quantum entanglement properties of neural-network states, with a focus on the restricted-Boltzmann-machine (RBM) architecture. We prove that the entanglement of all short-range RBM states satisfies an area law for arbitrary dimensions and bipartition geometry. For long-range RBM states we show by using an exact construction that such states could exhibit volume-law entanglement, implying a notable capability of RBM in representing efficiently quantum states with massive entanglement. We further examine generic RBM states with random weight parameters. We find that their averaged entanglement entropy obeys volume-law scaling and meantime strongly deviates from the Page-entropy of the completely random pure states. We show that their entanglement spectrum has no universal part associated with random matrix theory and bears a Poisson-type level statistics. Using reinforcement learning, we demonstrate that RBM is capable of finding the ground state (with power-law entanglement) of a model Hamiltonian with long-range interaction. In addition, we show, through a concrete example of the one-dimensional symmetry-protected topological cluster states, that the RBM representation may also be used as a tool to analytically compute the entanglement spectrum. Our results uncover the unparalleled power of artificial neural networks in representing quantum many-body states, which paves a novel way to bridge computer science based machine learning techniques to outstanding quantum condensed matter physics problems.
神经网络状态中的量子纠缠
机器学习是当今发展最快的跨学科领域之一,为解决复杂的量子多体问题提供了前所未有的前景。理解具有代表性的人工神经网络状态的物理方面最近在机器学习技术在量子多体物理中的应用中变得非常需要。在这里,我们研究了神经网络状态的量子纠缠特性,重点研究了受限玻尔兹曼机(RBM)结构。我们证明了所有短程RBM态的纠缠满足任意维和双分形几何的面积定律。对于远程RBM状态,我们通过使用精确的结构证明了这些状态可以表现出体积律纠缠,这意味着RBM在有效地表示具有大量纠缠的量子态方面具有显着的能力。我们进一步研究了具有随机权参数的一般RBM状态。我们发现它们的平均纠缠熵服从体积律缩放,同时强烈偏离完全随机纯态的page熵。我们证明了它们的纠缠谱没有与随机矩阵理论相关的普适部分,并且具有泊松型水平统计量。使用强化学习,我们证明了RBM能够找到具有远程相互作用的模型哈密顿量的基态(具有幂律纠缠)。此外,我们通过一维对称保护拓扑簇态的具体例子表明,RBM表示也可以用作分析计算纠缠谱的工具。我们的研究结果揭示了人工神经网络在表示量子多体态方面的无与伦比的能力,这为基于计算机科学的机器学习技术解决突出的量子凝聚态物理问题铺平了一条新的道路。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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