Adversarial Examples and Adversarial Training
May 30, 2017 · (MetaMind, Amazon, Google) ... adversarial examples of any machine learning model. (Goodfellow 2016) Weaknesses Persist (Goodfellow 2016) Adversarial Training Labeled as bird Decrease probability of bird class Still has same label (bird) (Goodfellow 2016) Virtual Adversarial Training
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