Symmetry Aware Machine Learning.
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IISER Mohali
Abstract
We investigate an equivariant neural network architecture that is equivariant with re-
spect to operations of the Lorentz group. The basis of the architecture is the Equivariant
Universal Approximation, which specifies constraints for any architecture so that it effec-
tively simulates physical processes. We demonstrate that an equivariant architecture like
this has fewer learnable parameters with its components being much more physically in-
terpretable for classification tasks like top tagging in particle physics. The performance of
the neural network is measured using the Top Quark Tagging Reference Dataset [1], for
tagging hadronic top quark decays given the 4-momenta of jet constituents.