Deep Learning Symmetries and Lie Groups
ORAL
Abstract
We design a deep-learning algorithm for the discovery and identification of the continuous group of symmetries present in a labeled dataset. We use fully connected neural networks to model the symmetry transformations and the corresponding generators. We construct loss functions that ensure that the applied transformations are symmetries and that the corresponding set of generators forms a closed (sub)algebra. Our procedure is validated with several examples illustrating different types of conserved quantities preserved by a symmetry. In the process of deriving the full set of symmetries, we analyze the complete subgroup structure of the rotation groups SO(2), SO(3), and SO(4) and of the Lorentz group SO(1,3). Other examples include SO(10), squeeze mapping, and piece-wise discontinuous labels, demonstrating that our method is completely general, with many possible data science applications. Our study also opens the door for using a machine learning approach in the mathematical study of Lie groups and their properties.
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Presenters
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Roy T Forestano
University of Florida
Authors
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Roy T Forestano
University of Florida
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Konstantin T Matchev
University of Florida
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Katia Matcheva
University of Florida
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Alexander Roman
University of Florida
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Sarunas Verner
University of Florida
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Eyup Bedirhan Unlu
University of Florida