Unsupervised mapping of phase diagrams of 2D systems from infinite projected entangled-pair states via deep anomaly detection

We demonstrate how to map out the phase diagram of a two dimensional quantum many body system with no prior physical knowledge by applying deep \textit{anomaly detection} to ground states from infinite projected entangled pair state simulations. As a benchmark, the phase diagram of the 2D frustra...

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Main Author: Korbinian Kottmann, Philippe Corboz, Maciej Lewenstein, Antonio Acín
Format: Article
Language:English
Published: SciPost 2021-08-01
Series:SciPost Physics
Online Access:https://scipost.org/SciPostPhys.11.2.025
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spelling doaj-5f633aebafdd4df28a7e32589d77b43d2021-08-09T11:55:11ZengSciPostSciPost Physics2542-46532021-08-0111202510.21468/SciPostPhys.11.2.025Unsupervised mapping of phase diagrams of 2D systems from infinite projected entangled-pair states via deep anomaly detectionKorbinian Kottmann, Philippe Corboz, Maciej Lewenstein, Antonio AcínWe demonstrate how to map out the phase diagram of a two dimensional quantum many body system with no prior physical knowledge by applying deep \textit{anomaly detection} to ground states from infinite projected entangled pair state simulations. As a benchmark, the phase diagram of the 2D frustrated bilayer Heisenberg model is analyzed, which exhibits a second-order and two first-order quantum phase transitions. We show that in order to get a good qualitative picture of the transition lines, it suffices to use data from the cost-efficient simple update optimization. Results are further improved by post-selecting ground-states based on their energy at the cost of contracting the tensor network once. Moreover, we show that the mantra of ``more training data leads to better results'' is not true for the learning task at hand and that, in principle, one training example suffices for this learning task. This puts the necessity of neural network optimizations for these learning tasks in question and we show that, at least for the model and data at hand, a simple geometric analysis suffices.https://scipost.org/SciPostPhys.11.2.025
collection DOAJ
language English
format Article
sources DOAJ
author Korbinian Kottmann, Philippe Corboz, Maciej Lewenstein, Antonio Acín
spellingShingle Korbinian Kottmann, Philippe Corboz, Maciej Lewenstein, Antonio Acín
Unsupervised mapping of phase diagrams of 2D systems from infinite projected entangled-pair states via deep anomaly detection
SciPost Physics
author_facet Korbinian Kottmann, Philippe Corboz, Maciej Lewenstein, Antonio Acín
author_sort Korbinian Kottmann, Philippe Corboz, Maciej Lewenstein, Antonio Acín
title Unsupervised mapping of phase diagrams of 2D systems from infinite projected entangled-pair states via deep anomaly detection
title_short Unsupervised mapping of phase diagrams of 2D systems from infinite projected entangled-pair states via deep anomaly detection
title_full Unsupervised mapping of phase diagrams of 2D systems from infinite projected entangled-pair states via deep anomaly detection
title_fullStr Unsupervised mapping of phase diagrams of 2D systems from infinite projected entangled-pair states via deep anomaly detection
title_full_unstemmed Unsupervised mapping of phase diagrams of 2D systems from infinite projected entangled-pair states via deep anomaly detection
title_sort unsupervised mapping of phase diagrams of 2d systems from infinite projected entangled-pair states via deep anomaly detection
publisher SciPost
series SciPost Physics
issn 2542-4653
publishDate 2021-08-01
description We demonstrate how to map out the phase diagram of a two dimensional quantum many body system with no prior physical knowledge by applying deep \textit{anomaly detection} to ground states from infinite projected entangled pair state simulations. As a benchmark, the phase diagram of the 2D frustrated bilayer Heisenberg model is analyzed, which exhibits a second-order and two first-order quantum phase transitions. We show that in order to get a good qualitative picture of the transition lines, it suffices to use data from the cost-efficient simple update optimization. Results are further improved by post-selecting ground-states based on their energy at the cost of contracting the tensor network once. Moreover, we show that the mantra of ``more training data leads to better results'' is not true for the learning task at hand and that, in principle, one training example suffices for this learning task. This puts the necessity of neural network optimizations for these learning tasks in question and we show that, at least for the model and data at hand, a simple geometric analysis suffices.
url https://scipost.org/SciPostPhys.11.2.025
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