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Stochastic Activation Pruning for Robust Adversarial Defense

About

Neural networks are known to be vulnerable to adversarial examples. Carefully chosen perturbations to real images, while imperceptible to humans, induce misclassification and threaten the reliability of deep learning systems in the wild. To guard against adversarial examples, we take inspiration from game theory and cast the problem as a minimax zero-sum game between the adversary and the model. In general, for such games, the optimal strategy for both players requires a stochastic policy, also known as a mixed strategy. In this light, we propose Stochastic Activation Pruning (SAP), a mixed strategy for adversarial defense. SAP prunes a random subset of activations (preferentially pruning those with smaller magnitude) and scales up the survivors to compensate. We can apply SAP to pretrained networks, including adversarially trained models, without fine-tuning, providing robustness against adversarial examples. Experiments demonstrate that SAP confers robustness against attacks, increasing accuracy and preserving calibration.

Guneet S. Dhillon, Kamyar Azizzadenesheli, Zachary C. Lipton, Jeremy Bernstein, Jean Kossaifi, Aran Khanna, Anima Anandkumar• 2018

Related benchmarks

TaskDatasetResultRank
EEG ClassificationBNCI2014002
Benign Accuracy70.72
42
EEG ClassificationBNCI 2014001
Benign Accuracy46.58
42
EEG ClassificationWeibo 2014
Benign Accuracy32.55
42
EEG ClassificationBNCI2014001, Weibo2014, BNCI2014002 Average
Benign Accuracy49.95
42
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