In the context of adversarial robustness, we make three strongly related contributions. First, we prove that while attacking ReLU classifiers is $\mathit{NP}$-hard, ensuring their robustness at training time is $\Sigma^2_P$-hard (even on a single example). This asymmetry provides a rationale for the fact that robust classifications approaches are frequently fooled in the literature. Second, we show that inference-time robustness certificates are not affected by this asymmetry, by introducing a proof-of-concept approach named Counter-Attack (CA). Indeed, CA displays a reversed asymmetry: running the defense is $\mathit{NP}$-hard, while attacking it is $\Sigma_2^P$-hard. Finally, motivated by our previous result, we argue that adversarial attacks can be used in the context of robustness certification, and provide an empirical evaluation of their effectiveness. As a byproduct of this process, we also release UG100, a benchmark dataset for adversarial attacks.

Computational Asymmetries in Robust Classification / Marro Samuele, Lombardi Michele. - ELETTRONICO. - 202:(2023), pp. 24082-24138. (Intervento presentato al convegno ICML 2023 tenutosi a Honolulu, Hawaii (USA) nel 23-29/07/2023).

Computational Asymmetries in Robust Classification

Marro Samuele
Primo
;
Lombardi Michele
Ultimo
2023

Abstract

In the context of adversarial robustness, we make three strongly related contributions. First, we prove that while attacking ReLU classifiers is $\mathit{NP}$-hard, ensuring their robustness at training time is $\Sigma^2_P$-hard (even on a single example). This asymmetry provides a rationale for the fact that robust classifications approaches are frequently fooled in the literature. Second, we show that inference-time robustness certificates are not affected by this asymmetry, by introducing a proof-of-concept approach named Counter-Attack (CA). Indeed, CA displays a reversed asymmetry: running the defense is $\mathit{NP}$-hard, while attacking it is $\Sigma_2^P$-hard. Finally, motivated by our previous result, we argue that adversarial attacks can be used in the context of robustness certification, and provide an empirical evaluation of their effectiveness. As a byproduct of this process, we also release UG100, a benchmark dataset for adversarial attacks.
2023
Proceedings of the 40th International Conference on Machine Learning
24082
24138
Computational Asymmetries in Robust Classification / Marro Samuele, Lombardi Michele. - ELETTRONICO. - 202:(2023), pp. 24082-24138. (Intervento presentato al convegno ICML 2023 tenutosi a Honolulu, Hawaii (USA) nel 23-29/07/2023).
Marro Samuele, Lombardi Michele
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11585/967603
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