2024
DOI: 10.3389/fncom.2024.1387077
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Translational symmetry in convolutions with localized kernels causes an implicit bias toward high frequency adversarial examples

Josue O. Caro,
Yilong Ju,
Ryan Pyle
et al.

Abstract: Adversarial attacks are still a significant challenge for neural networks. Recent efforts have shown that adversarial perturbations typically contain high-frequency features, but the root cause of this phenomenon remains unknown. Inspired by theoretical work on linear convolutional models, we hypothesize that translational symmetry in convolutional operations together with localized kernels implicitly bias the learning of high-frequency features, and that this is one of the main causes of high frequency advers… Show more

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