AI RESEARCH

FedAttr: Towards Privacy-preserving Client-Level Attribution in Federated LLM Fine-tuning

arXiv CS.LG

ArXi:2605.06596v1 Announce Type: cross Watermark radioactivity testing type of methods can detect whether a model was trained on watermarked documents, and have become key tools for protecting data ownership in the fine-tuning of large language models (LLMs). Existing works have proved their effectiveness in centralized LLM fine-tuning. However, this type of method faces several challenges and remains underexplored in federated learning (FL), a widely-applied paradigm for fine-tuning LLMs collaboratively on private data across different users.