Drawback of Enforcing Equivariance and Its Compensation via the Lens of Expressive Power

Abstract

Equivariant neural networks encode the intrinsic symmetry of data as an inductive bias, which has achieved impressive performance in wide domains. However, the understanding to their expressive power remains premature. Focusing on 2-layer ReLU networks, this paper investigates the impact of enforcing equivariance constraints on the expressive power. By examining the boundary hyperplanes and the channel vectors, we constructively demonstrate that enforcing equivariance constraints could undermine the expressive power. Naturally, this drawback can be compensated for by enlarging the model size -- we further prove upper bounds on the required enlargement for compensation. Surprisingly, we show that the enlarged neural architectures have reduced hypothesis space dimensionality, implying even better generalizability.

Cite

Text

Chen et al. "Drawback of Enforcing Equivariance and Its Compensation via the Lens of Expressive Power." Transactions on Machine Learning Research, 2026.

Markdown

[Chen et al. "Drawback of Enforcing Equivariance and Its Compensation via the Lens of Expressive Power." Transactions on Machine Learning Research, 2026.](https://mlanthology.org/tmlr/2026/chen2026tmlr-drawback/)

BibTeX

@article{chen2026tmlr-drawback,
  title     = {{Drawback of Enforcing Equivariance and Its Compensation via the Lens of Expressive Power}},
  author    = {Chen, Yuzhu and Qin, Tian and Tian, Xinmei and He, Fengxiang and Tao, Dacheng},
  journal   = {Transactions on Machine Learning Research},
  year      = {2026},
  url       = {https://mlanthology.org/tmlr/2026/chen2026tmlr-drawback/}
}