<div class="csl-bib-body">
<div class="csl-entry">Holland, K., Ipp, A., Müller, D. I., & Wenger, U. (2024). Application of gauge equivariant convolutional neural networks to learning a fixed point action for SU(3) gauge theory. In <i>ICLR 2024 Workshop on AI4DifferentialEquations In Science</i>. ICLR 2024 Workshop on AI4DifferentialEquations in Science, Vienna, Austria. http://hdl.handle.net/20.500.12708/210283</div>
</div>
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dc.identifier.uri
http://hdl.handle.net/20.500.12708/210283
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dc.description.abstract
Lattice gauge theory is pivotal in understanding nuclear physics and the strong interaction of quarks and gluons from first principles, shedding light on phenomena such as confinement and asymptotic freedom, and providing quantitative understanding of masses and decay rates of mesons and baryons. Scaling up corresponding Monte Carlo simulations faces challenges such as critical slowing down and topological freezing. One proposed approach to address these challenges is through the use of fixed point lattice actions. These actions preserve continuum classical properties even after discretization, thereby reducing lattice artifacts at the quantum level, but they can only be defined implicitly. Here, we employ machine learning, specifically lattice gauge equivariant convolutional neural networks (L-CNNs), to learn fixed point actions in a gauge symmetry preserving way. We obtain a fixed point action for four-dimensional SU(3) gauge theory which is superior to previous hand-crafted parametrizations. This advancement is crucial for future Monte Carlo simulations.
en
dc.description.sponsorship
FWF - Österr. Wissenschaftsfonds
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dc.description.sponsorship
FWF - Österr. Wissenschaftsfonds
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dc.description.sponsorship
FWF - Österr. Wissenschaftsfonds
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dc.language.iso
en
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dc.subject
Machine Learning
en
dc.subject
Lattice Gauge Theory
en
dc.title
Application of gauge equivariant convolutional neural networks to learning a fixed point action for SU(3) gauge theory
en
dc.type
Inproceedings
en
dc.type
Konferenzbeitrag
de
dc.contributor.affiliation
University of the Pacific, United States of America (the)
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dc.contributor.affiliation
University of Bern, Switzerland
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dc.relation.grantno
P 32446-N27
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dc.relation.grantno
P 34455-N
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dc.relation.grantno
P 34764-N
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dc.type.category
Full-Paper Contribution
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tuw.booktitle
ICLR 2024 Workshop on AI4DifferentialEquations In Science
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tuw.peerreviewed
true
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tuw.project.title
Glasma-Simulationen mit maschinellem Lernen hochskalieren