Alpaca Against Vicuna: Using Llms To Uncover Memorization Of Llms · The Large Language Model Bible Contribute to LLM-Bible

Alpaca Against Vicuna: Using Llms To Uncover Memorization Of Llms

Kassem Aly M., Mahmoud Omar, Mireshghallah Niloofar, Kim Hyunwoo, Tsvetkov Yulia, Choi Yejin, Saad Sherif, Rana Santu. Arxiv 2024

[Paper] [Code]    
Agentic Efficiency And Optimization Has Code Prompting Reinforcement Learning Security Training Techniques

In this paper, we introduce a black-box prompt optimization method that uses an attacker LLM agent to uncover higher levels of memorization in a victim agent, compared to what is revealed by prompting the target model with the training data directly, which is the dominant approach of quantifying memorization in LLMs. We use an iterative rejection-sampling optimization process to find instruction-based prompts with two main characteristics: (1) minimal overlap with the training data to avoid presenting the solution directly to the model, and (2) maximal overlap between the victim model’s output and the training data, aiming to induce the victim to spit out training data. We observe that our instruction-based prompts generate outputs with 23.7% higher overlap with training data compared to the baseline prefix-suffix measurements. Our findings show that (1) instruction-tuned models can expose pre-training data as much as their base-models, if not more so, (2) contexts other than the original training data can lead to leakage, and (3) using instructions proposed by other LLMs can open a new avenue of automated attacks that we should further study and explore. The code can be found at https://github.com/Alymostafa/Instruction_based_attack .

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