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Preserving gauge invariance in neural networks (2112.11239v1)

Published 21 Dec 2021 in hep-lat, cs.LG, hep-ph, hep-th, and stat.ML

Abstract: In these proceedings we present lattice gauge equivariant convolutional neural networks (L-CNNs) which are able to process data from lattice gauge theory simulations while exactly preserving gauge symmetry. We review aspects of the architecture and show how L-CNNs can represent a large class of gauge invariant and equivariant functions on the lattice. We compare the performance of L-CNNs and non-equivariant networks using a non-linear regression problem and demonstrate how gauge invariance is broken for non-equivariant models.

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