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AutoDAN-Turbo: A Lifelong Agent for Strategy Self-Exploration to Jailbreak LLMs

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In this paper, we propose AutoDAN-Turbo, a black-box jailbreak method that can automatically discover as many jailbreak strategies as possible from scratch, without any human intervention or predefined scopes (e.g., specified candidate strategies), and use them for red-teaming. As a result, AutoDAN-Turbo can significantly outperform baseline methods, achieving a 74.3% higher average attack success rate on public benchmarks. Notably, AutoDAN-Turbo achieves an 88.5 attack success rate on GPT-4-1106-turbo. In addition, AutoDAN-Turbo is a unified framework that can incorporate existing human-designed jailbreak strategies in a plug-and-play manner. By integrating human-designed strategies, AutoDAN-Turbo can even achieve a higher attack success rate of 93.4 on GPT-4-1106-turbo.

Xiaogeng Liu, Peiran Li, Edward Suh, Yevgeniy Vorobeychik, Zhuoqing Mao, Somesh Jha, Patrick McDaniel, Huan Sun, Bo Li, Chaowei Xiao• 2024

Related benchmarks

TaskDatasetResultRank
Jailbreak AttackHarmBench
Attack Success Rate (ASR)83.5
557
Jailbreak AttackAdvBench
AASR96
271
Red TeamingHarmBench
ASR96.3
244
Jailbreak AttackJailbreakBench
ASR35
242
Jailbreak AttackMaliciousInstruct
ASR63
161
JailbreakingAdvBench
ASR88
132
JailbreakingHarmBench--
68
Jailbreak AttackJailbreakBench (JBB)
ASR55.76
62
Jailbreak AttackJBB-Behaviors
Rule-Judge Score68
56
Jailbreak AttackJailbreakBench
ASR188
39
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