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A Theoretical Analysis of Efficiency Constrained Utility-Privacy
  Bi-Objective Optimization in Federated Learning

A Theoretical Analysis of Efficiency Constrained Utility-Privacy Bi-Objective Optimization in Federated Learning

27 December 2023
Hanlin Gu
Xinyuan Zhao
Gongxi Zhu
Yuxing Han
Yan Kang
Lixin Fan
Qiang Yang
    FedML
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Papers citing "A Theoretical Analysis of Efficiency Constrained Utility-Privacy Bi-Objective Optimization in Federated Learning"

1 / 1 papers shown
Title
Optimizing Privacy, Utility and Efficiency in Constrained
  Multi-Objective Federated Learning
Optimizing Privacy, Utility and Efficiency in Constrained Multi-Objective Federated Learning
Yan Kang
Hanlin Gu
Xingxing Tang
Yuanqin He
Yuzhu Zhang
Jinnan He
Yuxing Han
Lixin Fan
Kai Chen
Qiang Yang
FedML
63
18
0
29 Apr 2023
1