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Over the past few years, neural networks were proven vulnerable to adversarial images: targeted but imperceptible image perturbations lead to drastically different predictions. We show that adversarial vulnerability increases with the gradients of the training objective when viewed as a function of the inputs. Surprisingly, vulnerability does not depend on network topology: for many standard network architectures, we prove that at initialization, the ₁-norm of these gradients grows as the square root of the input dimension, leaving the networks increasingly vulnerable with growing image size. We empirically show that this dimension dependence persists after either usual or robust training, but gets attenuated with higher regularization.
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Carl-Johann Simon-Gabriel
Yann Ollivier
Centre Hospitalier Universitaire de Caen Normandie
Léon Bottou
Microsoft Research New York City (United States)
Max Planck Society
Max Planck Institute for Intelligent Systems
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Simon-Gabriel et al. (Mon,) studied this question.
synapsesocial.com/papers/6a1d2219659691eef004b744 — DOI: https://doi.org/10.48550/arxiv.1802.01421