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Efficient LLM-Jailbreaking by Introducing Visual Modality

30 May 2024
Zhenxing Niu
Yuyao Sun
Haoxuan Ji
Zheng Lin
Haichang Gao
Xinbo Gao
Gang Hua
Rong Jin
ArXiv (abs)PDFHTMLGithub
Main:7 Pages
2 Figures
Bibliography:2 Pages
5 Tables
Abstract

This paper focuses on jailbreaking attacks against large language models (LLMs), eliciting them to generate objectionable content in response to harmful user queries. Unlike previous LLM-jailbreaks that directly orient to LLMs, our approach begins by constructing a multimodal large language model (MLLM) through the incorporation of a visual module into the target LLM. Subsequently, we conduct an efficient MLLM-jailbreak to generate jailbreaking embeddings embJS. Finally, we convert the embJS into text space to facilitate the jailbreaking of the target LLM. Compared to direct LLM-jailbreaking, our approach is more efficient, as MLLMs are more vulnerable to jailbreaking than pure LLM. Additionally, to improve the attack success rate (ASR) of jailbreaking, we propose an image-text semantic matching scheme to identify a suitable initial input. Extensive experiments demonstrate that our approach surpasses current state-of-the-art methods in terms of both efficiency and effectiveness. Moreover, our approach exhibits superior cross-class jailbreaking capabilities.

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