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SafeAligner: Safety Alignment against Jailbreak Attacks via Response Disparity Guidance

Authors :
Huang, Caishuang
Zhao, Wanxu
Zheng, Rui
Lv, Huijie
Dou, Shihan
Li, Sixian
Wang, Xiao
Zhou, Enyu
Ye, Junjie
Yang, Yuming
Gui, Tao
Zhang, Qi
Huang, Xuanjing
Publication Year :
2024

Abstract

As the development of large language models (LLMs) rapidly advances, securing these models effectively without compromising their utility has become a pivotal area of research. However, current defense strategies against jailbreak attacks (i.e., efforts to bypass security protocols) often suffer from limited adaptability, restricted general capability, and high cost. To address these challenges, we introduce SafeAligner, a methodology implemented at the decoding stage to fortify defenses against jailbreak attacks. We begin by developing two specialized models: the Sentinel Model, which is trained to foster safety, and the Intruder Model, designed to generate riskier responses. SafeAligner leverages the disparity in security levels between the responses from these models to differentiate between harmful and beneficial tokens, effectively guiding the safety alignment by altering the output token distribution of the target model. Extensive experiments show that SafeAligner can increase the likelihood of beneficial tokens, while reducing the occurrence of harmful ones, thereby ensuring secure alignment with minimal loss to generality.

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2406.18118
Document Type :
Working Paper