
Open access
Date
2019-05Type
- Conference Paper
ETH Bibliography
no
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Abstract
A wide range of defenses have been proposed to harden neural networks against adversarial attacks. However, a pattern has emerged in which the majority of adversarial defenses are quickly broken by new attacks. Given the lack of success at generating robust defenses, we are led to ask a fundamental question: Are adversarial attacks inevitable? This paper analyzes adversarial examples from a theoretical perspective, and identifies fundamental bounds on the susceptibility of a classifier to adversarial attacks. We show that, for certain classes of problems, adversarial examples are inescapable. Using experiments, we explore the implications of theoretical guarantees for real-world problems and discuss how factors such as dimensionality and image complexity limit a classifier's robustness against adversarial examples. Show more
Permanent link
https://doi.org/10.3929/ethz-b-000460350Publication status
publishedEvent
Organisational unit
09695 - Studer, Christoph / Studer, Christoph
Notes
Conference lecture held on May 7, 2019More
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ETH Bibliography
no
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