MLCRCVLGNEDec 12, 2017

Decision-Based Adversarial Attacks: Reliable Attacks Against Black-Box Machine Learning Models

arXiv:1712.04248v21535 citationsHas Code
AI Analysis

This work addresses the safety of deployed machine learning systems, such as autonomous cars, by providing a more practical and robust attack method for real-world black-box scenarios, though it builds on prior decision-based approaches.

The authors tackled the problem of adversarial attacks on black-box machine learning models by introducing the Boundary Attack, a decision-based method that reduces perturbations while staying adversarial, achieving competitive performance with gradient-based attacks on ImageNet and successfully attacking two real-world black-box algorithms from Clarifai.com.

Many machine learning algorithms are vulnerable to almost imperceptible perturbations of their inputs. So far it was unclear how much risk adversarial perturbations carry for the safety of real-world machine learning applications because most methods used to generate such perturbations rely either on detailed model information (gradient-based attacks) or on confidence scores such as class probabilities (score-based attacks), neither of which are available in most real-world scenarios. In many such cases one currently needs to retreat to transfer-based attacks which rely on cumbersome substitute models, need access to the training data and can be defended against. Here we emphasise the importance of attacks which solely rely on the final model decision. Such decision-based attacks are (1) applicable to real-world black-box models such as autonomous cars, (2) need less knowledge and are easier to apply than transfer-based attacks and (3) are more robust to simple defences than gradient- or score-based attacks. Previous attacks in this category were limited to simple models or simple datasets. Here we introduce the Boundary Attack, a decision-based attack that starts from a large adversarial perturbation and then seeks to reduce the perturbation while staying adversarial. The attack is conceptually simple, requires close to no hyperparameter tuning, does not rely on substitute models and is competitive with the best gradient-based attacks in standard computer vision tasks like ImageNet. We apply the attack on two black-box algorithms from Clarifai.com. The Boundary Attack in particular and the class of decision-based attacks in general open new avenues to study the robustness of machine learning models and raise new questions regarding the safety of deployed machine learning systems. An implementation of the attack is available as part of Foolbox at https://github.com/bethgelab/foolbox .

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