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Abstract
Robust machine learning formulations have emerged to address the prevalent
vulnerability of deep neural networks to adversarial examples. Our work draws
the connection between optimal robust learning and the privacy-utility tradeoff
problem, which is a generalization of the rate-distortion problem. The saddle
point of the game between a robust classifier and an adversarial perturbation
can be found via the solution of a maximum conditional entropy problem. This
information-theoretic perspective sheds light on the fundamental tradeoff
between robustness and clean data performance, which ultimately arises from the
geometric structure of the underlying data distribution and perturbation
constraints.