cs.AI updates on arXiv.org 10月09日 12:08
LLM指纹识别:ZeroPrint技术提升版权保护
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本文提出ZeroPrint技术,通过利用Fisher信息理论,克服了现有黑盒指纹识别方法的不足,有效提升了大型语言模型(LLM)的指纹识别能力,为LLM的版权保护提供了新思路。

arXiv:2510.06605v1 Announce Type: cross Abstract: The substantial investment required to develop Large Language Models (LLMs) makes them valuable intellectual property, raising significant concerns about copyright protection. LLM fingerprinting has emerged as a key technique to address this, which aims to verify a model's origin by extracting an intrinsic, unique signature (a "fingerprint") and comparing it to that of a source model to identify illicit copies. However, existing black-box fingerprinting methods often fail to generate distinctive LLM fingerprints. This ineffectiveness arises because black-box methods typically rely on model outputs, which lose critical information about the model's unique parameters due to the usage of non-linear functions. To address this, we first leverage Fisher Information Theory to formally demonstrate that the gradient of the model's input is a more informative feature for fingerprinting than the output. Based on this insight, we propose ZeroPrint, a novel method that approximates these information-rich gradients in a black-box setting using zeroth-order estimation. ZeroPrint overcomes the challenge of applying this to discrete text by simulating input perturbations via semantic-preserving word substitutions. This operation allows ZeroPrint to estimate the model's Jacobian matrix as a unique fingerprint. Experiments on the standard benchmark show ZeroPrint achieves a state-of-the-art effectiveness and robustness, significantly outperforming existing black-box methods.

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LLM指纹识别 版权保护 ZeroPrint技术 Fisher信息理论 大型语言模型
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