Notice

This is not the latest version of this item. The latest version can be found at: https://repository.kaust.edu.sa/handle/10754/670339

Show simple item record

dc.contributor.authorYang, Zhuo
dc.contributor.authorHan, Yufei
dc.contributor.authorZhang, Xiangliang
dc.date.accessioned2021-07-28T12:01:05Z
dc.date.available2021-07-28T12:01:05Z
dc.date.issued2021-06-29
dc.identifier.urihttp://hdl.handle.net/10754/670339.1
dc.description.abstractDespite of the pervasive existence of multi-label evasion attack, it is an open yet essential problem to characterize the origin of the adversarial vulnerability of a multi-label learning system and assess its attackability. In this study, we focus on non-targeted evasion attack against multi-label classifiers. The goal of the threat is to cause miss-classification with respect to as many labels as possible, with the same input perturbation. Our work gains in-depth understanding about the multi-label adversarial attack by first characterizing the transferability of the attack based on the functional properties of the multi-label classifier. We unveil how the transferability level of the attack determines the attackability of the classifier via establishing an information-theoretic analysis of the adversarial risk. Furthermore, we propose a transferability-centered attackability assessment, named Soft Attackability Estimator (SAE), to evaluate the intrinsic vulnerability level of the targeted multi-label classifier. This estimator is then integrated as a transferability-tuning regularization term into the multi-label learning paradigm to achieve adversarially robust classification. The experimental study on real-world data echos the theoretical analysis and verify the validity of the transferability-regularized multi-label learning method.
dc.publisherarXiv
dc.relation.urlhttps://arxiv.org/pdf/2106.15360.pdf
dc.rightsArchived with thanks to arXiv
dc.subjectAttackability of multi-label models
dc.subjectAttack transferability
dc.subjectAdversarial risk analysis
dc.subject·Robust training
dc.titleAttack Transferability Characterization for Adversarially Robust Multi-label Classification
dc.typePreprint
dc.contributor.departmentComputer Science Program
dc.contributor.departmentComputer, Electrical and Mathematical Sciences and Engineering (CEMSE) Division
dc.eprint.versionPre-print
dc.contributor.institutionCIDRE team, Inria, France
dc.identifier.arxivid2106.15360
kaust.personYang, Zhuo
kaust.personZhang, Xiangliang
refterms.dateFOA2021-07-28T12:09:15Z


Files in this item

Thumbnail
Name:
Preprintfile1.pdf
Size:
571.3Kb
Format:
PDF
Description:
Pre-print

This item appears in the following Collection(s)

Show simple item record

VersionItemEditorDateSummary

*Selected version