Towards poisoning of deep learning algorithms with back-gradient optimization

MLMuñoz-González, LuisBBBattista BiggioADAmbra DemontisAPAndrea PaudiceVWVasin Wongrassamee

Imperial College London · University of Cagliari

Abstract

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 first extend the definition of poisoning attacks to multiclass problems. We then propose a novel poisoning algorithm…

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534
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35.58
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100%
References
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Authors

7

Topics & keywords

Keywords
  • Computer science
  • Machine learning
  • Artificial intelligence
  • Adversarial system
  • Deep learning
  • Artificial neural network
  • Online machine learning
  • Adversarial machine learning
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