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Privacy-Preserving and Reliable Decentralized Federated Learning

  • Yuanyuan Gao
  • , Lei Zhang
  • , Lulu Wang
  • , Kim Kwang Raymond Choo*
  • , Rui Zhang
  • *此作品的通讯作者
  • Science and Technology on Communication Security Laboratory
  • East China Normal University
  • University of Texas at San Antonio

科研成果: 期刊稿件文章同行评审

摘要

Conventional federated learning (FL) approaches generally rely on a centralized server, and there has been a trend of designing asynchronous FL approaches for distributed applications partly to mitigate limitations associated with conventional (synchronous) FL approaches (e.g., single point of failure / attack). In this paper, we first introduce two new tools, namely: a quality-based aggregation method and an extended dynamic contribution broadcast encryption (DConBE). Building on these two new tools and local differential privacy, we then propose a privacy-preserving and reliable decentralized FL scheme, designed to support batch joining/leaving of clients while incurring minimal delay and achieving high model accuracy. In other words, our scheme seeks to ensure an optimal trade-off between model accuracy and data privacy, which is also demonstrated in our simulation results. For example, the results show that our aggregation method can effectively avoid low-quality updates in the sense that the scheme guarantees high model accuracy even in the presence of bad clients who may submit low-quality updates. In addition, our scheme incurs a lower loss and the extended DConBE only slightly affects the efficiency of our scheme. With the extended dynamic contribution broadcast encryption, our scheme can efficiently support batch joining/leaving of clients.

源语言英语
页(从-至)2879-2891
页数13
期刊IEEE Transactions on Services Computing
16
4
DOI
出版状态已出版 - 1 7月 2023

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