Multi-lattice sampling of quantum field theories via neural operator-based flows

We consider the problem of sampling lattice field configurations on a lattice from the Boltzmann distribution corresponding to some action. Since such densities arise as approximationw of an underlying functional density, we frame the task as an instance of operator learning. We propose to approxima...

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Main Authors: Bálint Máté, François Fleuret
Format: Article
Language:English
Published: IOP Publishing 2024-01-01
Series:Machine Learning: Science and Technology
Subjects:
Online Access:https://doi.org/10.1088/2632-2153/ad9707
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author Bálint Máté
François Fleuret
author_facet Bálint Máté
François Fleuret
author_sort Bálint Máté
collection DOAJ
description We consider the problem of sampling lattice field configurations on a lattice from the Boltzmann distribution corresponding to some action. Since such densities arise as approximationw of an underlying functional density, we frame the task as an instance of operator learning. We propose to approximate a time-dependent neural operator whose time integral provides a mapping between the functional distributions of the free and target theories. Once a particular lattice is chosen, the neural operator can be discretized to a finite-dimensional, time-dependent vector field which in turn induces a continuous normalizing flow between finite dimensional distributions over the chosen lattice. This flow can then be trained to be a diffeormorphism between the discretized free and target theories on the chosen lattice, and, by construction, can be evaluated on different discretizations of spacetime. We experimentally validate the proposal on the 2-dimensional φ ^4 -theory to explore to what extent such operator-based flow architectures generalize to lattice sizes they were not trained on, and show that pretraining on smaller lattices can lead to a speedup over training directly on the target lattice size.
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series Machine Learning: Science and Technology
spelling doaj-art-4f8ff28da1d64c65b639cc12c2d3c60a2024-12-04T12:46:36ZengIOP PublishingMachine Learning: Science and Technology2632-21532024-01-015404505310.1088/2632-2153/ad9707Multi-lattice sampling of quantum field theories via neural operator-based flowsBálint Máté0https://orcid.org/0000-0001-9144-9206François Fleuret1Department of Computer Science, University of Geneva , Geneva, SwitzerlandDepartment of Computer Science, University of Geneva , Geneva, SwitzerlandWe consider the problem of sampling lattice field configurations on a lattice from the Boltzmann distribution corresponding to some action. Since such densities arise as approximationw of an underlying functional density, we frame the task as an instance of operator learning. We propose to approximate a time-dependent neural operator whose time integral provides a mapping between the functional distributions of the free and target theories. Once a particular lattice is chosen, the neural operator can be discretized to a finite-dimensional, time-dependent vector field which in turn induces a continuous normalizing flow between finite dimensional distributions over the chosen lattice. This flow can then be trained to be a diffeormorphism between the discretized free and target theories on the chosen lattice, and, by construction, can be evaluated on different discretizations of spacetime. We experimentally validate the proposal on the 2-dimensional φ ^4 -theory to explore to what extent such operator-based flow architectures generalize to lattice sizes they were not trained on, and show that pretraining on smaller lattices can lead to a speedup over training directly on the target lattice size.https://doi.org/10.1088/2632-2153/ad9707normalizing flowslattice field theoryneural operatorsflow-based sampling
spellingShingle Bálint Máté
François Fleuret
Multi-lattice sampling of quantum field theories via neural operator-based flows
Machine Learning: Science and Technology
normalizing flows
lattice field theory
neural operators
flow-based sampling
title Multi-lattice sampling of quantum field theories via neural operator-based flows
title_full Multi-lattice sampling of quantum field theories via neural operator-based flows
title_fullStr Multi-lattice sampling of quantum field theories via neural operator-based flows
title_full_unstemmed Multi-lattice sampling of quantum field theories via neural operator-based flows
title_short Multi-lattice sampling of quantum field theories via neural operator-based flows
title_sort multi lattice sampling of quantum field theories via neural operator based flows
topic normalizing flows
lattice field theory
neural operators
flow-based sampling
url https://doi.org/10.1088/2632-2153/ad9707
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