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Algebraic Priors for Approximately Equivariant Networks

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Equivariant neural networks incorporate symmetries through group actions, embedding them as an inductive bias to improve performance. Existing methods learn an equivariant action on the latent space, or design architectures that are equivariant by construction. These approaches often deliver strong empirical results but can involve architecture-specific constraints, large parameter counts, and high computational cost. We challenge the paradigm of complex equivariant architectures with a parameter-free approach grounded in group representation theory. We prove that for an equivariant encoder over a finite group, the latent space must almost surely contain one copy of its regular representation for each linearly independent data orbit, which we explore with a number of empirical studies. Leveraging this foundational algebraic insight, we impose the group's regular representation as an inductive bias via an auxiliary loss, adding no learnable parameters. Our extensive evaluation shows that this method matches or outperforms specialized models in several cases, even those for infinite groups. We further validate our choice of the regular representation through an ablation study, showing it consistently outperforms defining and trivial group representation baselines.

Riccardo Ali, Pietro Li\`o, Jamie Vicary• 2025

Related benchmarks

TaskDatasetResultRank
ClassificationMedMNIST3D Nodule (test)
Accuracy88.7
11
ClassificationMedMNIST3D Synapse (test)
Accuracy77
11
ClassificationMedMNIST3D Organ (test)
Accuracy64.2
11
AutoregressionSMOKE (test)
Future RMSE0.78
10
Image ClassificationDDMNIST D4 symmetry (test)
Accuracy86.8
8
Image ClassificationDDMNIST C4 symmetry (test)
Accuracy91.5
7
Image ClassificationDDMNIST C2 symmetry (test)
Accuracy94.7
7
3D Shape ClassificationSHREC '11 conformally transformed (test)
Accuracy90.45
5
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