TL;DR
JailExpert is a novel framework that leverages past attack experiences to enhance the effectiveness and efficiency of jailbreak attacks on large language models, addressing limitations of previous methods.
Contribution
It introduces a formal experience structure, semantic grouping, and dynamic experience pool updating to improve jailbreak strategies.
Findings
17% increase in attack success rate
2.7 times improvement in attack efficiency
Significant enhancement over state-of-the-art methods
Abstract
Large language models (LLMs) generate human-aligned content under certain safety constraints. However, the current known technique ``jailbreak prompt'' can circumvent safety-aligned measures and induce LLMs to output malicious content. Research on Jailbreaking can help identify vulnerabilities in LLMs and guide the development of robust security frameworks. To circumvent the issue of attack templates becoming obsolete as models evolve, existing methods adopt iterative mutation and dynamic optimization to facilitate more automated jailbreak attacks. However, these methods face two challenges: inefficiency and repetitive optimization, as they overlook the value of past attack experiences. To better integrate past attack experiences to assist current jailbreak attempts, we propose the \textbf{JailExpert}, an automated jailbreak framework, which is the first to achieve a formal…
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