23
2

Testing for Geometric Invariance and Equivariance

Abstract

Invariant and equivariant models incorporate the symmetry of an object to be estimated (here non-parametric regression functions f:XRf : \mathcal{X} \rightarrow \mathbb{R}). These models perform better (with respect to L2L^2 loss) and are increasingly being used in practice, but encounter problems when the symmetry is falsely assumed. In this paper we present a framework for testing for GG-equivariance for any semi-group GG. This will give confidence to the use of such models when the symmetry is not known a priori. These tests are independent of the model and are computationally quick, so can be easily used before model fitting to test their validity.

View on arXiv
Comments on this paper