cs.AI updates on arXiv.org 08月05日
FPEdit: Robust LLM Fingerprinting through Localized Knowledge Editing
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本文提出一种名为FPEdit的知识编辑框架,通过修改模型权重注入语义指纹,实现大型语言模型的隐秘所有权编码,同时保持模型功能。实验表明,FPEdit在多种场景下均能保持高效且不易被检测。

arXiv:2508.02092v1 Announce Type: cross Abstract: Large language models represent significant investments in computation, data, and engineering expertise, making them extraordinarily valuable intellectual assets. Nevertheless, these AI assets remain vulnerable to unauthorized redistribution and commercial exploitation through fine-tuning or black-box deployment. Current fingerprinting approaches face a fundamental trade-off: intrinsic methods require full parameter access, while backdoor-based techniques employ statistically anomalous triggers easily detected and filtered by adversaries. To address these limitations, we introduce FPEdit, a novel knowledge-editing framework that injects semantically coherent natural language fingerprints by modifying a sparse subset of model weights. This ensures stealthy and precise ownership encoding without degrading the core functionality. Extensive experiments show that FPEdit achieves $95$-$100\%$ fingerprint retention under both full-parameter fine-tuning and parameter-efficient adaptation, while preserving performance on 24 downstream benchmarks. Moreover, FPEdit remains robust under quantization, pruning, and stochastic decoding, and can embed 10 fingerprint pairs into LLaMA2-7B in under 10 minutes using less than 32 GB of GPU memory, a $70\%$ reduction in resource requirements compared to existing techniques. These advances establish FPEdit as the first fingerprinting approach to simultaneously achieve robustness against adaptation, resistance to detection, and preservation of model utility, providing a minimally invasive solution for reliable provenance verification of large language models in adversarial deployment scenarios.

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大型语言模型 指纹识别 知识编辑框架
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