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  4. Finding Actual Descent Directions For Adversarial Training
 
conference paper not in proceedings

Finding Actual Descent Directions For Adversarial Training

Latorre, Fabian  
•
Krawczuk, Igor  
•
Dadi, Leello Tadesse  
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2023
11th International Conference on Learning Representations (ICLR)

Adversarial Training using a strong first-order adversary (PGD) is the gold standard for training Deep Neural Networks that are robust to adversarial examples. We show that, contrary to the general understanding of the method, the gradient at an optimal adversarial example may increase, rather than decrease, the adversarially robust loss. This holds independently of the learning rate. More precisely, we provide a counterexample to a corollary of Danskin’s Theorem presented in the seminal paper of Madry et al. (2018) which states that a solution of the inner maximization problem can yield a descent direction for the adversarially robust loss. Based on a correct interpretation of Danskin’s Theorem, we propose Danskin’s Descent Direction (DDi) and we verify experimentally that it provides better directions than those obtained by a PGD adversary. Using the CIFAR10 dataset we further provide a real world example showing that our method achieves a steeper increase in robustness levels in the early training stages of smooth-activation networks without BatchNorm, and is more stable than the PGD baseline. As a limitation, PGD training of ReLU+BatchNorm networks still performs better, but current theory is unable to explain this.

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Type
conference paper not in proceedings
Author(s)
Latorre, Fabian  
Krawczuk, Igor  
Dadi, Leello Tadesse  
Pethick, Thomas Michaelsen  
Cevher, Volkan  orcid-logo
Date Issued

2023

Total of pages

17

Subjects

ml-ai

Editorial or Peer reviewed

REVIEWED

Written at

EPFL

EPFL units
LIONS  
Event nameEvent placeEvent date
11th International Conference on Learning Representations (ICLR)

Kigali, Rwanda

May 1-5, 2023

Available on Infoscience
March 9, 2023
Use this identifier to reference this record
https://infoscience.epfl.ch/handle/20.500.14299/195587
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