Explain2Attack: text adversarial attacks via cross-domain interpretability

Mahmoud Hossam, Trung Le, He Zhao, Dinh Phung

Research output: Chapter in Book/Report/Conference proceedingConference PaperResearchpeer-review

3 Citations (Scopus)

Abstract

Training robust deep learning models for downstream tasks is a critical challenge. Research has shown that down-stream models can be easily fooled with adversarial inputs that look like the training data, but slightly perturbed, in a way imperceptible to humans. Understanding the behavior of natural language models under these attacks is crucial to better defend these models against such attacks. In the black-box attack setting, where no access to model parameters is available, the attacker can only query the output information from the targeted model to craft a successful attack. Current black-box state-of-the-art models are costly in both computational complexity and number of queries needed to craft successful adversarial examples. For real world scenarios, the number of queries is critical, where less queries are desired to avoid suspicion towards an attacking agent. In this paper, we propose Explain2Attack, a black-box adversarial attack on text classification task. Instead of searching for important words to be perturbed by querying the target model, Explain2Attack employs an interpretable substitute model from a similar domain to learn word importance scores. We show that our framework either achieves or out-performs attack rates of the state-of-the-art models, yet with lower queries cost and higher efficiency.

Original languageEnglish
Title of host publicationProceedings of ICPR 2020, 25th International Conference on Pattern Recognition
EditorsKim Boyer, Brian C.Lovell, Marcello Pelillo, Nicu Sebe, Rene Vidal, Jingyi Yu
Place of PublicationPiscataway NJ USA
PublisherIEEE, Institute of Electrical and Electronics Engineers
Pages8922-8928
Number of pages7
ISBN (Electronic)9781728188089
ISBN (Print)9781728188096
DOIs
Publication statusPublished - 2021
EventInternational Conference on Pattern Recognition 2020 - Virtual , Milano, Italy
Duration: 10 Jan 202115 Jan 2021
Conference number: 25th
https://ieeexplore-ieee-org.ezproxy.lib.monash.edu.au/xpl/conhome/9411940/proceeding (Proceedings)
https://www.micc.unifi.it/icpr2020/ (Website)

Publication series

NameProceedings - International Conference on Pattern Recognition
PublisherIEEE, Institute of Electrical and Electronics Engineers
ISSN (Print)1051-4651

Conference

ConferenceInternational Conference on Pattern Recognition 2020
Abbreviated titleICPR 2020
Country/TerritoryItaly
CityMilano
Period10/01/2115/01/21
Internet address

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