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Vertical Federated Learning Based on Consortium Blockchain for Data Sharing in Mobile Edge Computing

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摘要 The data in Mobile Edge Computing(MEC)contains tremendousmarket value,and data sharing canmaximize the usefulness of the data.However,certain data is quite sensitive,and sharing it directly may violate privacy.Vertical Federated Learning(VFL)is a secure distributed machine learning framework that completes joint model training by passing encryptedmodel parameters rather than raw data,so there is no data privacy leakage during the training process.Therefore,the VFL can build a bridge between data demander and owner to realize data sharing while protecting data privacy.Typically,the VFL requires a third party for key distribution and decryption of training results.In this article,we employ the consortium blockchain instead of the traditional third party and design a VFL architecture based on the consortium blockchain for data sharing in MEC.More specifically,we propose a V-Raft consensus algorithm based on Verifiable Random Functions(VRFs),which is a variant of the Raft.The VRaft is able to elect leader quickly and stably to assist data demander and owner to complete data sharing by VFL.Moreover,we apply secret sharing todistribute the private key to avoid the situationwhere the training result cannot be decrypted if the leader crashes.Finally,we analyzed the performance of the V-Raft and carried out simulation experiments,and the results show that compared with Raft,the V-Raft has higher efficiency and better scalability.
出处 《Computer Modeling in Engineering & Sciences》 SCIE EI 2023年第10期345-361,共17页 工程与科学中的计算机建模(英文)
基金 funded by the National Natural Science Foundation(61962009) the National Natural Science Foundation(62202118) Top Technology Talent Project from Guizhou Education Department(Qianjiao ji[2022]073) Foundation of Guangxi Key Laboratory of Cryptography and Information Security(GCIS202118).
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