Jailbreaking with Universal Multi-Prompts - podcast episode cover

Jailbreaking with Universal Multi-Prompts

Feb 07, 2025•20 min•Ep. 491
--:--
--:--
Download Metacast podcast app
Listen to this episode in Metacast mobile app
Don't just listen to podcasts. Learn from them with transcripts, summaries, and chapters for every episode. Skim, search, and bookmark insights. Learn more

Episode description

🤗 Upvotes: 4 | cs.CL, cs.AI, cs.CR, cs.LG

Authors:
Yu-Ling Hsu, Hsuan Su, Shang-Tse Chen

Title:
Jailbreaking with Universal Multi-Prompts

Arxiv:
http://arxiv.org/abs/2502.01154v1

Abstract:
Large language models (LLMs) have seen rapid development in recent years, revolutionizing various applications and significantly enhancing convenience and productivity. However, alongside their impressive capabilities, ethical concerns and new types of attacks, such as jailbreaking, have emerged. While most prompting techniques focus on optimizing adversarial inputs for individual cases, resulting in higher computational costs when dealing with large datasets. Less research has addressed the more general setting of training a universal attacker that can transfer to unseen tasks. In this paper, we introduce JUMP, a prompt-based method designed to jailbreak LLMs using universal multi-prompts. We also adapt our approach for defense, which we term DUMP. Experimental results demonstrate that our method for optimizing universal multi-prompts outperforms existing techniques.

For the best experience, listen in Metacast app for iOS or Android