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Ensure Differential Privacy and Convergence Accuracy in Consensus
  Tracking and Aggregative Games with Coupling Constraints

Ensure Differential Privacy and Convergence Accuracy in Consensus Tracking and Aggregative Games with Coupling Constraints

28 October 2022
Yongqiang Wang
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Papers citing "Ensure Differential Privacy and Convergence Accuracy in Consensus Tracking and Aggregative Games with Coupling Constraints"

2 / 2 papers shown
Title
Quantization Avoids Saddle Points in Distributed Optimization
Quantization Avoids Saddle Points in Distributed Optimization
Yanan Bo
Yongqiang Wang
MQ
16
2
0
15 Mar 2024
A Robust Dynamic Average Consensus Algorithm that Ensures both
  Differential Privacy and Accurate Convergence
A Robust Dynamic Average Consensus Algorithm that Ensures both Differential Privacy and Accurate Convergence
Yongqiang Wang
21
4
0
14 Nov 2022
1