HopSkipJumpAttack: A Query-Efficient Decision-Based Attack—Jianbo Chen, Michael I. Jordan, Martin J. Wainwright
The goal of a decision-based adversarial attack on a
trained model is to generate adversarial examples based solely
on observing output labels returned by the targeted model. We
develop HopSkipJumpAttack, a family of algorithms based on
a novel estimate of the gradient direction using binary information at the decision boundary. The proposed family includes both untargeted and targeted attacks optimized for l_2 and l_∞ similarity metrics respectively. Theoretical analysis is provided
for the proposed algorithms and the gradient direction estimate.
Experiments show HopSkipJumpAttack requires significantly
fewer model queries than several state-of-the-art decision-based
adversarial attacks. It also achieves competitive performance in
attacking several widely-used defense mechanisms.
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HopSkipJumpAttack: A Query-Efficient Decision-Based Attack | NatokHD