Finding Symmetry Breaking Order Parameters with Euclidean Neural Networks
ORAL
Abstract
Curie's principle states that "when effects show certain asymmetry, this asymmetry must be found in the causes that gave rise to them". We demonstrate that symmetry equivariant neural networks uphold Curie's principle and can be used to articulate many symmetry-relevant scientific questions into simple optimization problems. We prove these properties mathematically and demonstrate them numerically by training a Euclidean symmetry equivariant neural network to learn symmetry-breaking input to deform a square into a rectangle and to generate octahedra tilting patterns in perovskites.
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Presenters
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Tess Smidt
Lawrence Berkeley National Laboratory, Computational Research Division, Lawrence Berkeley National Laboratory
Authors
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Tess Smidt
Lawrence Berkeley National Laboratory, Computational Research Division, Lawrence Berkeley National Laboratory
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Mario Geiger
École polytechnique fédérale de Lausanne, Ecole Polytechnique Federale de Lausanne
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Benjamin Kurt Miller
University of Amsterdam