Attack HIGH relevance

Toward Efficient Membership Inference Attacks against Federated Large Language Models: A Projection Residual Approach

Guilin Deng Silong Chen Yuchuan Luo Yi Liu Songlei Wang Zhiping Cai Lin Liu Xiaohua Jia Shaojing Fu
Published
April 23, 2026
Updated
April 23, 2026

Abstract

Federated Large Language Models (FedLLMs) enable multiple parties to collaboratively fine-tune LLMs without sharing raw data, addressing challenges of limited resources and privacy concerns. Despite data localization, shared gradients can still expose sensitive information through membership inference attacks (MIAs). However, FedLLMs' unique properties, i.e. massive parameter scales, rapid convergence, and sparse, non-orthogonal gradients, render existing MIAs ineffective. To address this gap, we propose ProjRes, the first projection residuals-based passive MIA tailored for FedLLMs. ProjRes leverages hidden embedding vectors as sample representations and analyzes their projection residuals on the gradient subspace to uncover the intrinsic link between gradients and inputs. It requires no shadow models, auxiliary classifiers, or historical updates, ensuring efficiency and robustness. Experiments on four benchmarks and four LLMs show that ProjRes achieves near 100% accuracy, outperforming prior methods by up to 75.75%, and remains effective even under strong differential privacy defenses. Our findings reveal a previously overlooked privacy vulnerability in FedLLMs and call for a re-examination of their security assumptions. Our code and data are available at $\href{https://anonymous.4open.science/r/Passive-MIA-5268}{link}$.

Metadata

Comment
This is the full version (including complete appendices and supplementary materials) of the paper accepted for publication at the 2026 IEEE Symposium on Security and Privacy

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