Fixed point actions from convolutional neural networks
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BORIS DOI
Publisher DOI
Description
Lattice gauge-equivariant convolutional neural networks (L-CNNs) can be used to form arbitrarily shaped Wilson loops and can approximate any gauge-covariant or gauge-invariant function on the lattice. Here we use L-CNNs to describe fixed point (FP) actions which are based on renormalization group transformations. FP actions are classically perfect, i.e., they have no lattice artifacts on classical gauge-field configurations satisfying the equations of motion, and therefore possess scale invariant instanton solutions. FP actions are tree–level Symanzik–improved to all orders in the lattice spacing and can produce physical predictions with very small lattice artifacts even on coarse lattices. We find that L-CNNs are much more accurate at parametrizing the FP action compared to older approaches. They may therefore provide a way to circumvent critical slowing down and topological freezing towards the continuum limit.
Date of Publication
2024
Publication Type
Conference Item
Subject(s)
500 - Science::530 - Physics
Language(s)
en
Contributor(s)
Holland, K. | |
Ipp, A. | |
Müller, D. I. |
Additional Credits
Institut für Theoretische Physik (ITP) - Lattice Quantum Field Theory
Series
PoS LATTICE2023 (2024) 038
Access(Rights)
open.access