From Hero to Zรฉroe: A Benchmark of Low-Level Adversarial Attacks

October 12, 2020 ยท Declared Dead ยท ๐Ÿ› AACL

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Authors Steffen Eger, Yannik Benz arXiv ID 2010.05648 Category cs.CL: Computation & Language Citations 56 Venue AACL Last Checked 4 months ago
Abstract
Adversarial attacks are label-preserving modifications to inputs of machine learning classifiers designed to fool machines but not humans. Natural Language Processing (NLP) has mostly focused on high-level attack scenarios such as paraphrasing input texts. We argue that these are less realistic in typical application scenarios such as in social media, and instead focus on low-level attacks on the character-level. Guided by human cognitive abilities and human robustness, we propose the first large-scale catalogue and benchmark of low-level adversarial attacks, which we dub Zรฉroe, encompassing nine different attack modes including visual and phonetic adversaries. We show that RoBERTa, NLP's current workhorse, fails on our attacks. Our dataset provides a benchmark for testing robustness of future more human-like NLP models.
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