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Dettagli Bibliografici
Autori principali: Wu, Jiaxuan, Zhou, Yinghan, Peng, Wanli, Xue, Yiming, Wen, Juan, Zhong, Ping
Natura: Preprint
Pubblicazione: 2025
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Accesso online:https://arxiv.org/abs/2508.08836
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author Wu, Jiaxuan
Zhou, Yinghan
Peng, Wanli
Xue, Yiming
Wen, Juan
Zhong, Ping
author_facet Wu, Jiaxuan
Zhou, Yinghan
Peng, Wanli
Xue, Yiming
Wen, Juan
Zhong, Ping
contents Training large language models (LLMs) is resource-intensive and expensive, making protecting intellectual property (IP) for LLMs crucial. Recently, embedding fingerprints into LLMs has emerged as a prevalent method for establishing model ownership. However, existing back-door-based methods suffer from limited stealth and efficiency. To simultaneously address these issues, we propose EditMF, a training-free fingerprinting paradigm that achieves highly imperceptible fingerprint embedding with minimal computational overhead. Ownership bits are mapped to compact, semantically coherent triples drawn from an encrypted artificial knowledge base (e.g., virtual author-novel-protagonist facts). Causal tracing localizes the minimal set of layers influencing each triple, and a zero-space update injects the fingerprint without perturbing unrelated knowledge. Verification requires only a single black-box query and succeeds when the model returns the exact pre-embedded protagonist. Empirical results on LLaMA and Qwen families show that EditMF combines high imperceptibility with negligible model's performance loss, while delivering robustness far beyond LoRA-based fingerprinting and approaching that of SFT embeddings. Extensive experiments demonstrate that EditMF is an effective and low-overhead solution for secure LLM ownership verification.
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id arxiv_https___arxiv_org_abs_2508_08836
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle EditMF: Drawing an Invisible Fingerprint for Your Large Language Models
Wu, Jiaxuan
Zhou, Yinghan
Peng, Wanli
Xue, Yiming
Wen, Juan
Zhong, Ping
Cryptography and Security
Artificial Intelligence
Training large language models (LLMs) is resource-intensive and expensive, making protecting intellectual property (IP) for LLMs crucial. Recently, embedding fingerprints into LLMs has emerged as a prevalent method for establishing model ownership. However, existing back-door-based methods suffer from limited stealth and efficiency. To simultaneously address these issues, we propose EditMF, a training-free fingerprinting paradigm that achieves highly imperceptible fingerprint embedding with minimal computational overhead. Ownership bits are mapped to compact, semantically coherent triples drawn from an encrypted artificial knowledge base (e.g., virtual author-novel-protagonist facts). Causal tracing localizes the minimal set of layers influencing each triple, and a zero-space update injects the fingerprint without perturbing unrelated knowledge. Verification requires only a single black-box query and succeeds when the model returns the exact pre-embedded protagonist. Empirical results on LLaMA and Qwen families show that EditMF combines high imperceptibility with negligible model's performance loss, while delivering robustness far beyond LoRA-based fingerprinting and approaching that of SFT embeddings. Extensive experiments demonstrate that EditMF is an effective and low-overhead solution for secure LLM ownership verification.
title EditMF: Drawing an Invisible Fingerprint for Your Large Language Models
topic Cryptography and Security
Artificial Intelligence
url https://arxiv.org/abs/2508.08836