AI RESEARCH
Approximate Equivariance via Projection-based Regularisation
arXiv CS.LG
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ArXi:2601.05028v2 Announce Type: replace Equivariance is a powerful inductive bias in neural networks, improving generalisation and physical consistency. Recently, however, non-equivariant models have regained attention, due to their better runtime performance and imperfect symmetries that might arise in real-world applications. This has motivated the development of approximately equivariant models that strike a middle ground between respecting symmetries and fitting the data distribution.