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Hauptverfasser: Shukla, Shubhi, Dalui, Subhadeep, Alam, Manaar, Datta, Shubhajit, Mondal, Arijit, Mukhopadhyay, Debdeep, Chakrabarti, Partha Pratim
Format: Preprint
Veröffentlicht: 2021
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Online-Zugang:https://arxiv.org/abs/2112.04948
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author Shukla, Shubhi
Dalui, Subhadeep
Alam, Manaar
Datta, Shubhajit
Mondal, Arijit
Mukhopadhyay, Debdeep
Chakrabarti, Partha Pratim
author_facet Shukla, Shubhi
Dalui, Subhadeep
Alam, Manaar
Datta, Shubhajit
Mondal, Arijit
Mukhopadhyay, Debdeep
Chakrabarti, Partha Pratim
contents Adversarial attacks rely on transferability, where an adversarial example (AE) crafted on a surrogate classifier tends to mislead a target classifier. Recent ensemble methods demonstrate that AEs are less likely to mislead multiple classifiers in an ensemble. This paper proposes a new ensemble training using a Pairwise Adversarially Robust Loss (PARL) that by construction produces an ensemble of classifiers with diverse decision boundaries. PARL utilizes outputs and gradients of each layer with respect to network parameters in every classifier within the ensemble simultaneously. PARL is demonstrated to achieve higher robustness against black-box transfer attacks than previous ensemble methods as well as adversarial training without adversely affecting clean example accuracy. Extensive experiments using standard Resnet20, WideResnet28-10 classifiers demonstrate the robustness of PARL against state-of-the-art adversarial attacks. While maintaining similar clean accuracy and lesser training time, the proposed architecture has a 24.8% increase in robust accuracy ($ε$ = 0.07) from the state-of-the art method.
format Preprint
id arxiv_https___arxiv_org_abs_2112_04948
institution arXiv
publishDate 2021
record_format arxiv
spellingShingle Guardian of the Ensembles: Introducing Pairwise Adversarially Robust Loss for Resisting Adversarial Attacks in DNN Ensembles
Shukla, Shubhi
Dalui, Subhadeep
Alam, Manaar
Datta, Shubhajit
Mondal, Arijit
Mukhopadhyay, Debdeep
Chakrabarti, Partha Pratim
Machine Learning
Adversarial attacks rely on transferability, where an adversarial example (AE) crafted on a surrogate classifier tends to mislead a target classifier. Recent ensemble methods demonstrate that AEs are less likely to mislead multiple classifiers in an ensemble. This paper proposes a new ensemble training using a Pairwise Adversarially Robust Loss (PARL) that by construction produces an ensemble of classifiers with diverse decision boundaries. PARL utilizes outputs and gradients of each layer with respect to network parameters in every classifier within the ensemble simultaneously. PARL is demonstrated to achieve higher robustness against black-box transfer attacks than previous ensemble methods as well as adversarial training without adversely affecting clean example accuracy. Extensive experiments using standard Resnet20, WideResnet28-10 classifiers demonstrate the robustness of PARL against state-of-the-art adversarial attacks. While maintaining similar clean accuracy and lesser training time, the proposed architecture has a 24.8% increase in robust accuracy ($ε$ = 0.07) from the state-of-the art method.
title Guardian of the Ensembles: Introducing Pairwise Adversarially Robust Loss for Resisting Adversarial Attacks in DNN Ensembles
topic Machine Learning
url https://arxiv.org/abs/2112.04948