Detecting Quantum Critical Points of Correlated Systems by Quantum Convolutional Neural Network Using Data from Variational Quantum Eigensolver
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Published:2022-12-08
Issue:4
Volume:4
Page:574-588
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ISSN:2624-960X
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Container-title:Quantum Reports
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language:en
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Short-container-title:Quantum Reports
Author:
Wrobel Nathaniel,Baul Anshumitra,Tam Ka-Ming,Moreno Juana
Abstract
Machine learning has been applied to a wide variety of models, from classical statistical mechanics to quantum strongly correlated systems, for classifying phase transitions. The recently proposed quantum convolutional neural network (QCNN) provides a new framework for using quantum circuits instead of classical neural networks as the backbone of classification methods. We present the results from training the QCNN by the wavefunctions of the variational quantum eigensolver for the one-dimensional transverse field Ising model (TFIM). We demonstrate that the QCNN identifies wavefunctions corresponding to the paramagnetic and ferromagnetic phases of the TFIM with reasonable accuracy. The QCNN can be trained to predict the corresponding ‘phase’ of wavefunctions around the putative quantum critical point even though it is trained by wavefunctions far away. The paper provides a basis for exploiting the QCNN to identify the quantum critical point.
Funder
NSF
U.S. Department of Energy, Office of Science, Office of Basic Energy Sciences
Center for Computation & Technology at Louisiana State University
Subject
Physics and Astronomy (miscellaneous),Astronomy and Astrophysics,Atomic and Molecular Physics, and Optics,Statistical and Nonlinear Physics