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Provable Robustness Against a Union of \\(_0\\) Adversarial Attacks
by
Lowd, Daniel
, Hammoudeh, Zayd
in
Agglomeration
/ Robustness
2024
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Provable Robustness Against a Union of \\(_0\\) Adversarial Attacks
by
Lowd, Daniel
, Hammoudeh, Zayd
in
Agglomeration
/ Robustness
2024
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Provable Robustness Against a Union of \\(_0\\) Adversarial Attacks
Paper
Provable Robustness Against a Union of \\(_0\\) Adversarial Attacks
2024
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Overview
Sparse or \\(_0\\) adversarial attacks arbitrarily perturb an unknown subset of the features. \\(_0\\) robustness analysis is particularly well-suited for heterogeneous (tabular) data where features have different types or scales. State-of-the-art \\(_0\\) certified defenses are based on randomized smoothing and apply to evasion attacks only. This paper proposes feature partition aggregation (FPA) -- a certified defense against the union of \\(_0\\) evasion, backdoor, and poisoning attacks. FPA generates its stronger robustness guarantees via an ensemble whose submodels are trained on disjoint feature sets. Compared to state-of-the-art \\(_0\\) defenses, FPA is up to 3,000\\(\\) faster and provides larger median robustness guarantees (e.g., median certificates of 13 pixels over 10 for CIFAR10, 12 pixels over 10 for MNIST, 4 features over 1 for Weather, and 3 features over 1 for Ames), meaning FPA provides the additional dimensions of robustness essentially for free.
Publisher
Cornell University Library, arXiv.org
Subject
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