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An Investigation of Data Poisoning Defenses for Online Learning (1905.12121v3)

Published 28 May 2019 in cs.LG, cs.CR, and stat.ML

Abstract: Data poisoning attacks -- where an adversary can modify a small fraction of training data, with the goal of forcing the trained classifier to high loss -- are an important threat for machine learning in many applications. While a body of prior work has developed attacks and defenses, there is not much general understanding on when various attacks and defenses are effective. In this work, we undertake a rigorous study of defenses against data poisoning for online learning. First, we study four standard defenses in a powerful threat model, and provide conditions under which they can allow or resist rapid poisoning. We then consider a weaker and more realistic threat model, and show that the success of the adversary in the presence of data poisoning defenses there depends on the "ease" of the learning problem.

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Authors (3)
  1. Yizhen Wang (13 papers)
  2. Somesh Jha (112 papers)
  3. Kamalika Chaudhuri (122 papers)
Citations (5)

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