NDSS 2025 – URVFL: Undetectable Data Reconstruction Attack On Vertical Federated Learning
好的,我现在需要帮用户总结一篇文章的内容,控制在一百个字以内,并且不需要特定的开头。首先,我得仔细阅读用户提供的文章内容。 文章主要讨论的是垂直联邦学习(VFL)中的数据重构攻击。作者们提出了URVFL攻击,这是一种恶意攻击策略,能够绕过现有的检测机制。URVFL通过结合判别器和辅助分类器,利用标签信息生成恶意梯度,使得攻击更隐蔽。实验结果表明,URVFL在性能和隐秘性上都优于现有方法。 接下来,我需要将这些关键点浓缩到100字以内。重点包括:研究对象是垂直联邦学习中的数据重构攻击,提出的方法是URVFL,利用标签信息生成恶意梯度,绕过检测,并且实验结果优秀。 最后,确保语言简洁明了,直接描述内容,不使用任何开头词。 </think> 该研究提出了一种针对垂直联邦学习的不可检测数据重构攻击方法(URVFL),通过利用标签信息生成恶意梯度,在不改变训练任务的情况下实现数据窃取,并成功绕过现有检测机制。实验表明该方法在攻击效果和隐秘性上显著优于现有方法。 2025-12-11 20:0:0 Author: securityboulevard.com(查看原文) 阅读量:5 收藏

Session 5C: Federated Learning 1

Authors, Creators & Presenters: Duanyi Yao (Hong Kong University of Science and Technology), Songze Li (Southeast University), Xueluan Gong (Wuhan University), Sizai Hou (Hong Kong University of Science and Technology), Gaoning Pan (Hangzhou Dianzi University)
PAPER
URVFL: Undetectable Data Reconstruction Attack on Vertical Federated Learning
Vertical Federated Learning (VFL) is a collaborative learning paradigm designed for scenarios where multiple clients share disjoint features of the same set of data samples. Albeit a wide range of applications, VFL is faced with privacy leakage from data reconstruction attacks. These attacks generally fall into two categories: honest-but-curious (HBC), where adversaries steal data while adhering to the protocol; and malicious attacks, where adversaries breach the training protocol for significant data leakage. While most research has focused on HBC scenarios, the exploration of malicious attacks remains limited. Launching effective malicious attacks in VFL presents unique challenges: 1) Firstly, given the distributed nature of clients’ data features and models, each client rigorously guards its privacy and prohibits direct querying, complicating any attempts to steal data; 2) Existing malicious attacks alter the underlying VFL training task, and are hence easily detected by comparing the received gradients with the ones received in honest training. To overcome these challenges, we develop URVFL, a novel attack strategy that evades current detection mechanisms. The key idea is to integrate a discriminator with auxiliary classifier that takes a full advantage of the label information and generates malicious gradients to the victim clients: on one hand, label information helps to better characterize embeddings of samples from distinct classes, yielding an improved reconstruction performance; on the other hand, computing malicious gradients with label information better mimics the honest training, making the malicious gradients indistinguishable from the honest ones, and the attack much more stealthy. Our comprehensive experiments demonstrate that URVFL significantly outperforms existing attacks, and successfully circumvents SOTA detection methods for malicious attacks. Additional ablation studies and evaluations on defenses further underscore the robustness and effectiveness of URVFL
ABOUT NDSS
The Network and Distributed System Security Symposium (NDSS) fosters information exchange among researchers and practitioners of network and distributed system security. The target audience includes those interested in practical aspects of network and distributed system security, with a focus on actual system design and implementation. A major goal is to encourage and enable the Internet community to apply, deploy, and advance the state of available security technologies.

Our thanks to the Network and Distributed System Security (NDSS) Symposium for publishing their Creators, Authors and Presenter’s superb NDSS Symposium 2025 Conference content on the Organizations’ YouTube Channel.

Permalink

*** This is a Security Bloggers Network syndicated blog from Infosecurity.US authored by Marc Handelman. Read the original post at: https://www.youtube-nocookie.com/embed/TYPzIH1VpyE?si=qntq9M9xj4KCicIe


文章来源: https://securityboulevard.com/2025/12/ndss-2025-urvfl-undetectable-data-reconstruction-attack-on-vertical-federated-learning/
如有侵权请联系:admin#unsafe.sh