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Provable Privacy Advantages of Decentralized Federated Learning via
  Distributed Optimization

Provable Privacy Advantages of Decentralized Federated Learning via Distributed Optimization

12 July 2024
Wenrui Yu
Qiongxiu Li
Milan Lopuhaä-Zwakenberg
Mads Græsbøll Christensen
Richard Heusdens
    FedML
ArXivPDFHTML

Papers citing "Provable Privacy Advantages of Decentralized Federated Learning via Distributed Optimization"

5 / 5 papers shown
Title
From Centralized to Decentralized Federated Learning: Theoretical Insights, Privacy Preservation, and Robustness Challenges
Qiongxiu Li
Wenrui Yu
Yufei Xia
Jun Pang
FedML
50
1
0
10 Mar 2025
Re-Evaluating Privacy in Centralized and Decentralized Learning: An
  Information-Theoretical and Empirical Study
Re-Evaluating Privacy in Centralized and Decentralized Learning: An Information-Theoretical and Empirical Study
Changlong Ji
Stephane Maag
Richard Heusdens
Qiongxiu Li
FedML
24
2
0
21 Sep 2024
Swarm Learning: A Survey of Concepts, Applications, and Trends
Swarm Learning: A Survey of Concepts, Applications, and Trends
Elham Shammar
Xiaohui Cui
M. A. Al-qaness
26
2
0
01 May 2024
On the (In)security of Peer-to-Peer Decentralized Machine Learning
On the (In)security of Peer-to-Peer Decentralized Machine Learning
Dario Pasquini
Mathilde Raynal
Carmela Troncoso
OOD
FedML
35
19
0
17 May 2022
When the Curious Abandon Honesty: Federated Learning Is Not Private
When the Curious Abandon Honesty: Federated Learning Is Not Private
Franziska Boenisch
Adam Dziedzic
R. Schuster
Ali Shahin Shamsabadi
Ilia Shumailov
Nicolas Papernot
FedML
AAML
69
181
0
06 Dec 2021
1