CISPA
Browse
2024-238-paper.pdf (1.72 MB)

LMSanitator: Defending Prompt-Tuning Against Task-Agnostic Backdoors.

Download (1.72 MB)
journal contribution
posted on 2024-02-14, 08:51 authored by Chengkun Wei, Wenlong Meng, Zhikun Zhang, Min ChenMin Chen, Minghu Zhao, Wenjing Fang, Lei Wang, Zhikun Zhang, Wenzhi Chen
Prompt-tuning has emerged as an attractive paradigm for deploying large-scale language models due to its strong downstream task performance and efficient multitask serving ability. Despite its wide adoption, we empirically show that prompt-tuning is vulnerable to downstream task-agnostic backdoors, which reside in the pretrained models and can affect arbitrary downstream tasks. The state-of-the-art backdoor detection approaches cannot defend against task-agnostic backdoors since they hardly converge in reversing the backdoor triggers. To address this issue, we propose LMSanitator, a novel approach for detecting and removing task-agnostic backdoors on Transformer models. Instead of directly inverting the triggers, LMSanitator aims to invert the predefined attack vectors (pretrained models' output when the input is embedded with triggers) of the task-agnostic backdoors, which achieves much better convergence performance and backdoor detection accuracy. LMSanitator further leverages prompt-tuning's property of freezing the pretrained model to perform accurate and fast output monitoring and input purging during the inference phase. Extensive experiments on multiple language models and NLP tasks illustrate the effectiveness of LMSanitator. For instance, LMSanitator achieves 92.8% backdoor detection accuracy on 960 models and decreases the attack success rate to less than 1% in most scenarios.

History

Primary Research Area

  • Trustworthy Information Processing

Journal

CoRR

Volume

abs/2308.13904

Sub Type

  • Article

BibTeX

@article{Wei:Meng:Zhang:Chen:Zhao:Fang:Wang:Zhang:Chen:2023, title = "LMSanitator: Defending Prompt-Tuning Against Task-Agnostic Backdoors.", author = "Wei, Chengkun" AND "Meng, Wenlong" AND "Zhang, Zhikun" AND "Chen, Min" AND "Zhao, Minghu" AND "Fang, Wenjing" AND "Wang, Lei" AND "Zhang, Zihui" AND "Chen, Wenzhi", year = 2023, month = 10, journal = "CoRR" }

Usage metrics

    Categories

    No categories selected

    Licence

    Exports

    RefWorks
    BibTeX
    Ref. manager
    Endnote
    DataCite
    NLM
    DC