Quantum Entanglement in Neural Network States

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 has recently become highly desirable in th...

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Main Authors: Dong-Ling Deng, Xiaopeng Li, S. Das Sarma
Format: Article
Language:English
Published: American Physical Society 2017-05-01
Series:Physical Review X
Online Access:http://doi.org/10.1103/PhysRevX.7.021021
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spelling doaj-c6d953c4dbd74c0183863b1e19c2a1dd2020-11-25T01:10:52ZengAmerican Physical SocietyPhysical Review X2160-33082017-05-017202102110.1103/PhysRevX.7.021021Quantum Entanglement in Neural Network StatesDong-Ling DengXiaopeng LiS. Das SarmaMachine 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 has recently become highly desirable in the applications of machine-learning techniques to quantum many-body physics. In this paper, we explore the data structures that encode the physical features in the network states by studying the quantum entanglement properties, with a focus on the restricted-Boltzmann-machine (RBM) architecture. We prove that the entanglement entropy 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 quantum states with massive entanglement. Strikingly, the neural-network representation for these states is remarkably efficient, in the sense that the number of nonzero parameters scales only linearly with the system size. We further examine the entanglement properties of generic RBM states by randomly sampling the weight parameters of the RBM. We find that their averaged entanglement entropy obeys volume-law scaling, and the 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 a 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 regardless of how much entanglement they possess, which paves a novel way to bridge computer-science-based machine-learning techniques to outstanding quantum condensed-matter physics problems.http://doi.org/10.1103/PhysRevX.7.021021
collection DOAJ
language English
format Article
sources DOAJ
author Dong-Ling Deng
Xiaopeng Li
S. Das Sarma
spellingShingle Dong-Ling Deng
Xiaopeng Li
S. Das Sarma
Quantum Entanglement in Neural Network States
Physical Review X
author_facet Dong-Ling Deng
Xiaopeng Li
S. Das Sarma
author_sort Dong-Ling Deng
title Quantum Entanglement in Neural Network States
title_short Quantum Entanglement in Neural Network States
title_full Quantum Entanglement in Neural Network States
title_fullStr Quantum Entanglement in Neural Network States
title_full_unstemmed Quantum Entanglement in Neural Network States
title_sort quantum entanglement in neural network states
publisher American Physical Society
series Physical Review X
issn 2160-3308
publishDate 2017-05-01
description 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 has recently become highly desirable in the applications of machine-learning techniques to quantum many-body physics. In this paper, we explore the data structures that encode the physical features in the network states by studying the quantum entanglement properties, with a focus on the restricted-Boltzmann-machine (RBM) architecture. We prove that the entanglement entropy 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 quantum states with massive entanglement. Strikingly, the neural-network representation for these states is remarkably efficient, in the sense that the number of nonzero parameters scales only linearly with the system size. We further examine the entanglement properties of generic RBM states by randomly sampling the weight parameters of the RBM. We find that their averaged entanglement entropy obeys volume-law scaling, and the 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 a 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 regardless of how much entanglement they possess, which paves a novel way to bridge computer-science-based machine-learning techniques to outstanding quantum condensed-matter physics problems.
url http://doi.org/10.1103/PhysRevX.7.021021
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