Equivariant neural networks for 2D Q-tensor prediction in nematic liquid crystals achieve lower errors and better generalization than non-equivariant models while satisfying symmetry constraints.
Zarnescu,Dy- namic cubic instability in a 2d q-tensor model for liq- uid crystals, Mathematical Models and Methods in Ap- plied Sciences25(2015), no
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On the Equivariant Learning of the $Q$-tensor Order Parameter
Equivariant neural networks for 2D Q-tensor prediction in nematic liquid crystals achieve lower errors and better generalization than non-equivariant models while satisfying symmetry constraints.