2022
DOI: 10.48550/arxiv.2205.01714
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Don't sweat the small stuff, classify the rest: Sample Shielding to protect text classifiers against adversarial attacks

Abstract: Deep learning (DL) is being used extensively for text classification. However, researchers have demonstrated the vulnerability of such classifiers to adversarial attacks. Attackers modify the text in a way which misleads the classifier while keeping the original meaning close to intact. State-of-the-art (SOTA) attack algorithms follow the general principle of making minimal changes to the text so as to not jeopardize semantics. Taking advantage of this we propose a novel and intuitive defense strategy called S… Show more

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