English

Equivariance Through Parameter-Sharing

Machine Learning 2017-06-15 v2 Neural and Evolutionary Computing

Abstract

We propose to study equivariance in deep neural networks through parameter symmetries. In particular, given a group G\mathcal{G} that acts discretely on the input and output of a standard neural network layer ϕW:MN\phi_{W}: \Re^{M} \to \Re^{N}, we show that ϕW\phi_{W} is equivariant with respect to G\mathcal{G}-action iff G\mathcal{G} explains the symmetries of the network parameters WW. Inspired by this observation, we then propose two parameter-sharing schemes to induce the desirable symmetry on WW. Our procedures for tying the parameters achieve G\mathcal{G}-equivariance and, under some conditions on the action of G\mathcal{G}, they guarantee sensitivity to all other permutation groups outside G\mathcal{G}.

Keywords

Cite

@article{arxiv.1702.08389,
  title  = {Equivariance Through Parameter-Sharing},
  author = {Siamak Ravanbakhsh and Jeff Schneider and Barnabas Poczos},
  journal= {arXiv preprint arXiv:1702.08389},
  year   = {2017}
}

Comments

icml'17

R2 v1 2026-06-22T18:29:40.989Z