首页|A Privacy-Preserving Scheme for Multi-Party Vertical Federated Learning

A Privacy-Preserving Scheme for Multi-Party Vertical Federated Learning

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As an important branch of federated learning,vertical federated learning (VFL) enables multiple institutions to train on the same user samples,bringing considerable industry benefits. However,VFL needs to exchange user features among multiple institutions,which raises concerns about privacy leakage. Moreover,existing multi-party VFL privacy-preserving schemes suffer from issues such as poor reli-ability and high communication overhead. To address these issues,we propose a privacy protection scheme for four institutional VFLs,named FVFL. A hierarchical framework is first introduced to support federated training among four institutions. We also design a verifiable repli-cated secret sharing (RSS) protocol (32)-sharing and combine it with homomorphic encryption to ensure the reliability of FVFL while ensuring the privacy of features and intermediate results of the four institutions. Our theoretical analysis proves the reliability and security of the pro-posed FVFL. Extended experiments verify that the proposed scheme achieves excellent performance with a low communication overhead.

vertical federated learningprivacy protectionreplicated secret sharing

FAN Mochan、ZHANG Zhipeng、LI Difei、ZHANG Qiming、YAO Haidong

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School of Information & Communication Engineering,University of Electronic Science and Technology of China,Chengdu 611731,China

ZTE Corporation,Shenzhen 518057,China

State Key Laboratory of Mobile Network and Mobile Multimedia Technology,Shenzhen 518055,China

2024

中兴通讯技术(英文版)
中兴通讯股份有限公司,安徽省科技情报研究所

中兴通讯技术(英文版)

影响因子:0.036
ISSN:1673-5188
年,卷(期):2024.22(4)