Litcius/Paper detail

Towards Building a Robust Toxicity Predictor

Dmitriy Bespalov, Sourav Bhabesh, Yi Xiang, Liutong Zhou, Yanjun Qi

202310 citationsDOIOpen Access PDF

Abstract

Recent NLP literature pays little attention to the robustness of toxicity language predictors, while these systems are most likely to be used in adversarial contexts. This paper presents a novel adversarial attack, \texttt{ToxicTrap}, introducing small word-level perturbations to fool SOTA text classifiers to predict toxic text samples as benign. \texttt{ToxicTrap} exploits greedy based search strategies to enable fast and effective generation of toxic adversarial examples. Two novel goal function designs allow \texttt{ToxicTrap} to identify weaknesses in both multiclass and multilabel toxic language detectors. Our empirical results show that SOTA toxicity text classifiers are indeed vulnerable to the proposed attacks, attaining over 98\% attack success rates in multilabel cases. We also show how a vanilla adversarial training and its improved version can help increase robustness of a toxicity detector even against unseen attacks.

Topics & Concepts

Adversarial systemExploitRobustness (evolution)Computer scienceArtificial intelligenceDetectorMachine learningTraining setComputer securityChemistryTelecommunicationsGeneBiochemistryHate Speech and Cyberbullying DetectionAdversarial Robustness in Machine Learning