cs.AI updates on arXiv.org 07月02日 12:03
Impact of Fine-Tuning Methods on Memorization in Large Language Models
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本文比较了基于参数和基于提示的细调方法在隐私风险方面的表现,发现基于提示的方法在性能和隐私保护方面更具优势。

arXiv:2507.00258v1 Announce Type: cross Abstract: As the capabilities of pre-trained large language models (LLMs) continue to advance, the "pre-train and fine-tune" paradigm has become increasingly mainstream, leading to the development of various fine-tuning methods. However, the privacy risks arising from memorization during fine-tuning have received relatively little attention. To address this gap, we categorize popular fine-tuning approaches and assess their impact on memorization through the lens of membership inference attacks (MIAs). Our results show that, compared to parameter-based fine-tuning, prompt-based fine-tuning achieves competitive performance while exhibiting lower vulnerability to MIAs. Furthermore, prompt-based methods maintain low memorization regardless of model scale. These findings suggest that parameter-based fine-tuning is more prone to leaking private information, whereas prompt-based fine-tuning serves as a more privacy-preserving option.

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细调方法 隐私风险 语言模型 提示学习 成员推断攻击
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