Improving Gradient-based Adversarial Training for Text Classification by Contrastive Learning and Auto-Encoder
Yao Qiu, Jinchao Zhang, Jie Zhou
Abstract
Recent work has proposed several efficient approaches for generating gradient-based adversarial perturbations on embeddings and proved that the model's performance and robustness can be improved when they are trained with these contaminated embeddings. While they paid little attention to how to help the model to learn these adversarial samples more efficiently. In this work, we focus on enhancing the model's ability to defend gradient-based adversarial attack during the model's training process and propose two novel adversarial training approaches: (1) CARL narrows the original sample and its adversarial sample in the representation space while enlarging their distance from different labeled samples.
Topics & Concepts
Adversarial systemComputer scienceArtificial intelligenceRobustness (evolution)Representation (politics)EncoderSentenceMachine learningSample (material)Natural language processingChemistryPolitical scienceGeneBiochemistryPoliticsOperating systemLawChromatographyAdversarial Robustness in Machine LearningTopic Modeling