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Theoretically Principled Federated Learning for Balancing Privacy and
  Utility

Theoretically Principled Federated Learning for Balancing Privacy and Utility

24 May 2023
Xiaojin Zhang
Wenjie Li
Kai Chen
Shutao Xia
Qian Yang
    FedML
ArXivPDFHTML

Papers citing "Theoretically Principled Federated Learning for Balancing Privacy and Utility"

9 / 9 papers shown
Title
FedEM: A Privacy-Preserving Framework for Concurrent Utility Preservation in Federated Learning
Mingcong Xu
Xiaojin Zhang
Wei Chen
Hai Jin
FedML
43
0
0
08 Mar 2025
Fed-AugMix: Balancing Privacy and Utility via Data Augmentation
Fed-AugMix: Balancing Privacy and Utility via Data Augmentation
HaoYang Li
Wei Chen
Xiaojin Zhang
FedML
70
0
0
18 Dec 2024
Theoretical Analysis of Privacy Leakage in Trustworthy Federated
  Learning: A Perspective from Linear Algebra and Optimization Theory
Theoretical Analysis of Privacy Leakage in Trustworthy Federated Learning: A Perspective from Linear Algebra and Optimization Theory
Xiaojin Zhang
Wei Chen
FedML
31
0
0
23 Jul 2024
A Unified Learn-to-Distort-Data Framework for Privacy-Utility Trade-off
  in Trustworthy Federated Learning
A Unified Learn-to-Distort-Data Framework for Privacy-Utility Trade-off in Trustworthy Federated Learning
Xiaojin Zhang
Mingcong Xu
Wei Chen
FedML
21
0
0
05 Jul 2024
Deciphering the Interplay between Local Differential Privacy, Average
  Bayesian Privacy, and Maximum Bayesian Privacy
Deciphering the Interplay between Local Differential Privacy, Average Bayesian Privacy, and Maximum Bayesian Privacy
Xiaojin Zhang
Yulin Fei
Wei Chen
29
1
0
25 Mar 2024
A Meta-learning Framework for Tuning Parameters of Protection Mechanisms
  in Trustworthy Federated Learning
A Meta-learning Framework for Tuning Parameters of Protection Mechanisms in Trustworthy Federated Learning
Xiaojin Zhang
Yan Kang
Lixin Fan
Kai Chen
Qiang Yang
FedML
11
6
0
28 May 2023
Towards Achieving Near-optimal Utility for Privacy-Preserving Federated
  Learning via Data Generation and Parameter Distortion
Towards Achieving Near-optimal Utility for Privacy-Preserving Federated Learning via Data Generation and Parameter Distortion
Xiaojin Zhang
Kai Chen
Qian Yang
FedML
14
5
0
07 May 2023
A Game-theoretic Framework for Privacy-preserving Federated Learning
A Game-theoretic Framework for Privacy-preserving Federated Learning
Xiaojin Zhang
Lixin Fan
Si-Yi Wang
Wenjie Li
Kai Chen
Qiang Yang
FedML
21
4
0
11 Apr 2023
Privacy Against Statistical Inference
Privacy Against Statistical Inference
Flavio du Pin Calmon
N. Fawaz
FedML
92
345
0
08 Oct 2012
1