Defense Against the Dark Arts: An overview of adversarial example security research and future research directions

06/11/2018
by   Ian Goodfellow, et al.
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This article presents a summary of a keynote lecture at the Deep Learning Security workshop at IEEE Security and Privacy 2018. This lecture summarizes the state of the art in defenses against adversarial examples and provides recommendations for future research directions on this topic.

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