Journal
PHYSICS LETTERS B
Volume 847, Issue -, Pages -Publisher
ELSEVIER
DOI: 10.1016/j.physletb.2023.138266
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This letter introduces two improved algorithms that significantly speed up the discovery of continuous symmetry transformations that preserve the data labels. The new methods are validated by deriving the complete set of generators for specific examples, demonstrating the general applicability of this machine-learning method for discovering symmetries in labeled datasets.
Recent work has applied supervised deep learning to derive continuous symmetry transformations that preserve the data labels and to obtain the corresponding algebras of symmetry generators. This letter introduces two improved algorithms that significantly speed up the discovery of these symmetry transformations. The new methods are demonstrated by deriving the complete set of generators for the unitary groups U(n) and the exceptional Lie groups G2, F4, and E6. A third post-processing algorithm renders the found generators in sparse form. We benchmark the performance improvement of the new algorithms relative to the standard approach. Given the significant complexity of the exceptional Lie groups, our results demonstrate that this machine-learning method for discovering symmetries is completely general and can be applied to a wide variety of labeled datasets.
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