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Large Language Models Are Better Adversaries: Exploring Generative Clean-Label Backdoor Attacks Against Text Classifiers

Wencong You, Zayd Hammoudeh, Daniel Lowd

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Abstract

Backdoor attacks manipulate model predictions by inserting innocuous triggers into training and test data. We focus on more realistic and more challenging clean-label attacks where the adversarial training examples are correctly labeled. Our attack, LLMBkd, leverages language models to automatically insert diverse style-based triggers into texts. We also propose a poison selection technique to improve the effectiveness of both LLMBkd as well as existing textual backdoor attacks. Lastly, we describe REACT, a baseline defense to mitigate backdoor attacks via antidote training examples. Our evaluations demonstrate LLMBkd's effectiveness and efficiency, where we consistently achieve high attack success rates across a wide range of styles with little effort and no model training.

Topics & Concepts

BackdoorComputer scienceFocus (optics)Adversarial systemComputer securityTraining setMachine learningGenerative grammarRange (aeronautics)Language modelArtificial intelligenceSelection (genetic algorithm)EngineeringOpticsAerospace engineeringPhysicsTopic ModelingNatural Language Processing TechniquesHate Speech and Cyberbullying Detection