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Adaptive Differentially Quantized Subspace Perturbation (ADQSP): A
  Unified Framework for Privacy-Preserving Distributed Average Consensus

Adaptive Differentially Quantized Subspace Perturbation (ADQSP): A Unified Framework for Privacy-Preserving Distributed Average Consensus

13 December 2023
Qiongxiu Li
Jaron Skovsted Gundersen
Milan Lopuhaä-Zwakenberg
Richard Heusdens
ArXivPDFHTML

Papers citing "Adaptive Differentially Quantized Subspace Perturbation (ADQSP): A Unified Framework for Privacy-Preserving Distributed Average Consensus"

8 / 8 papers shown
Title
Lightweight Trustworthy Distributed Clustering
Lightweight Trustworthy Distributed Clustering
Hongyang Li
Caesar Wu
Mohammed Chadli
Said Mammar
Pascal Bouvry
49
0
0
14 Apr 2025
From Centralized to Decentralized Federated Learning: Theoretical Insights, Privacy Preservation, and Robustness Challenges
Qiongxiu Li
Wenrui Yu
Yufei Xia
Jun Pang
FedML
60
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
34
2
0
21 Sep 2024
Privacy-Preserving Distributed Maximum Consensus Without Accuracy Loss
Privacy-Preserving Distributed Maximum Consensus Without Accuracy Loss
Wenrui Yu
Richard Heusdens
Jun Pang
Qiongxiu Li
28
3
0
16 Sep 2024
AttentionX: Exploiting Consensus Discrepancy In Attention from A
  Distributed Optimization Perspective
AttentionX: Exploiting Consensus Discrepancy In Attention from A Distributed Optimization Perspective
Guoqiang Zhang
Richard Heusdens
34
0
0
06 Sep 2024
Provable Privacy Advantages of Decentralized Federated Learning via
  Distributed Optimization
Provable Privacy Advantages of Decentralized Federated Learning via Distributed Optimization
Wenrui Yu
Qiongxiu Li
Milan Lopuhaä-Zwakenberg
Mads Græsbøll Christensen
Richard Heusdens
FedML
38
3
0
12 Jul 2024
Distributed Nonlinear Conic Optimisation with partially separable
  Structure
Distributed Nonlinear Conic Optimisation with partially separable Structure
Richard Heusdens
Guoqiang Zhang
44
1
0
15 May 2024
Distributed Optimisation with Linear Equality and Inequality Constraints
  using PDMM
Distributed Optimisation with Linear Equality and Inequality Constraints using PDMM
Richard Heusdens
Guoqiang Zhang
45
8
0
22 Sep 2023
1