What Affects Learned Equivariance in Deep Image Recognition Models?
- URL: http://arxiv.org/abs/2304.02628v2
- Date: Fri, 7 Apr 2023 14:38:21 GMT
- Title: What Affects Learned Equivariance in Deep Image Recognition Models?
- Authors: Robert-Jan Bruintjes, Tomasz Motyka, Jan van Gemert
- Abstract summary: We find evidence for a correlation between learned translation equivariance and validation accuracy on ImageNet.
Data augmentation, reduced model capacity and inductive bias in the form of convolutions induce higher learned equivariance in neural networks.
- Score: 10.590129221143222
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Equivariance w.r.t. geometric transformations in neural networks improves
data efficiency, parameter efficiency and robustness to out-of-domain
perspective shifts. When equivariance is not designed into a neural network,
the network can still learn equivariant functions from the data. We quantify
this learned equivariance, by proposing an improved measure for equivariance.
We find evidence for a correlation between learned translation equivariance and
validation accuracy on ImageNet. We therefore investigate what can increase the
learned equivariance in neural networks, and find that data augmentation,
reduced model capacity and inductive bias in the form of convolutions induce
higher learned equivariance in neural networks.
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