A General Theory of Correct, Incorrect, and Extrinsic Equivariance

Dec 10, 2023ยท
Dian Wang
,
Xupeng Zhu
,
Jung Yeon Park
,
Mingxi Jia
Guanang Su
Guanang Su
,
Robert Platt
,
Robin Walters
ยท 1 min read
Abstract
Although equivariant machine learning has proven effective at many tasks, success depends heavily on the assumption that the ground truth function is symmetric over the entire domain matching the symmetry in an equivariant neural network. A missing piece in the equivariant learning literature is the analysis of equivariant networks when symmetry exists only partially in the domain. In this work, we present a general theory for such a situation. We propose pointwise definitions of correct, incorrect, and extrinsic equivariance, which allow us to quantify continuously the degree of each type of equivariance a function displays. We then study the impact of various degrees of incorrect or extrinsic symmetry on model error. We prove error lower bounds for invariant or equivariant networks in classification or regression settings with partially incorrect symmetry. We also analyze the potentially harmful effects of extrinsic equivariance. Experiments validate these results in three different environments.
Type
Publication
In Conference on Neural Information Processing Systems 2023.
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