PREE: Towards Harmless and Adaptive Fingerprint Editing in Large Language Models via Knowledge Prefix Enhancement
By: Xubin Yue , Zhenhua Xu , Wenpeng Xing and more
Potential Business Impact:
Protects AI writing from being copied without permission.
Addressing the intellectual property protection challenges in commercial deployment of large language models (LLMs), existing black-box fingerprinting techniques face dual challenges from incremental fine-tuning erasure and feature-space defense due to their reliance on overfitting high-perplexity trigger patterns. Recent work has revealed that model editing in the fingerprinting domain offers distinct advantages, including significantly lower false positive rates, enhanced harmlessness, and superior robustness. Building on this foundation, this paper innovatively proposes a $\textbf{Pr}$efix-$\textbf{e}$nhanced Fingerprint $\textbf{E}$diting Framework (PREE), which encodes copyright information into parameter offsets through dual-channel knowledge edit to achieve covert embedding of fingerprint features. Experimental results demonstrate that the proposed solution achieves the 90\% trigger precision in mainstream architectures including LLaMA-3 and Qwen-2.5. The minimal parameter offset (change rate < 0.03) effectively preserves original knowledge representation while demonstrating strong robustness against incremental fine-tuning and multi-dimensional defense strategies, maintaining zero false positive rate throughout evaluations.
Similar Papers
FPEdit: Robust LLM Fingerprinting through Localized Knowledge Editing
Cryptography and Security
Protects AI from being stolen or copied.
From Evaluation to Defense: Constructing Persistent Edit-Based Fingerprints for Large Language Models
Computation and Language
Protects AI brains from being copied.
EditMF: Drawing an Invisible Fingerprint for Your Large Language Models
Cryptography and Security
Protects AI secrets by hiding ownership codes.