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arxiv 1708.08689 v1 pith:ZB7S57CB submitted 2017-08-29 cs.LG

Towards Poisoning of Deep Learning Algorithms with Back-gradient Optimization

classification cs.LG
keywords learningpoisoningalgorithmsexamplesadversarialdatatrainingattack
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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A number of online services nowadays rely upon machine learning to extract valuable information from data collected in the wild. This exposes learning algorithms to the threat of data poisoning, i.e., a coordinate attack in which a fraction of the training data is controlled by the attacker and manipulated to subvert the learning process. To date, these attacks have been devised only against a limited class of binary learning algorithms, due to the inherent complexity of the gradient-based procedure used to optimize the poisoning points (a.k.a. adversarial training examples). In this work, we rst extend the de nition of poisoning attacks to multiclass problems. We then propose a novel poisoning algorithm based on the idea of back-gradient optimization, i.e., to compute the gradient of interest through automatic di erentiation, while also reversing the learning procedure to drastically reduce the attack complexity. Compared to current poisoning strategies, our approach is able to target a wider class of learning algorithms, trained with gradient- based procedures, including neural networks and deep learning architectures. We empirically evaluate its e ectiveness on several application examples, including spam ltering, malware detection, and handwritten digit recognition. We nally show that, similarly to adversarial test examples, adversarial training examples can also be transferred across di erent learning algorithms.

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Cited by 1 Pith paper

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  1. Targeted Backdoor Attacks on Deep Learning Systems Using Data Poisoning

    cs.CR 2017-12 unverdicted novelty 7.0

    Injecting around 50 poisoned samples with a stealthy trigger creates backdoors in deep learning models achieving over 90% attack success under a weak threat model with no model or data knowledge required.