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Improving Equivariant Networks with Probabilistic Symmetry Breaking

Improving Equivariant Networks with Probabilistic Symmetry Breaking

27 March 2025
Hannah Lawrence
Vasco Portilheiro
Yan Zhang
Sékou-Oumar Kaba
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Papers citing "Improving Equivariant Networks with Probabilistic Symmetry Breaking"

1 / 1 papers shown
Title
Are High-Degree Representations Really Unnecessary in Equivariant Graph
  Neural Networks?
Are High-Degree Representations Really Unnecessary in Equivariant Graph Neural Networks?
Jiacheng Cen
Anyi Li
Ning Lin
Yuxiang Ren
Zihe Wang
Wenbing Huang
38
2
0
15 Oct 2024
1