4.7 Article

Privacy-Preserving Distributed ADMM With Event-Triggered Communication

Publisher

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/TNNLS.2022.3192346

Keywords

Optimization; Costs; Privacy; Approximation algorithms; Linear programming; Convex functions; Convergence; Alternating direction method of multipliers (ADMM); distributed optimization; event-triggered communication; privacy preserving

Funding

  1. National Natural Science Foundation of China [62176056, 62173087]
  2. Young Elite Scientists Sponsorship Program by the China Association for Science and Technology (CAST) [2021QNRC001]

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This article presents a privacy-preserving and communication-efficient algorithm for distributed optimization problems. The proposed algorithm incorporates an event-triggered mechanism and a Hessian approximation technique for privacy preservation and computation efficiency. Theoretical analysis shows the algorithm's convergence and accuracy. Numerical simulations demonstrate the effectiveness and efficiency of the algorithm.
This article addresses distributed optimization problems, in which a group of agents cooperatively minimize the sum of their private objective functions via information exchanging. Building on alternating direction method of multipliers (ADMM), we propose a privacy-preserving and communication-efficient decentralized quadratically approximated ADMM algorithm, termed PC-DQM, for solving such type of problems under the scenario of limited communication. In PC-DQM, an event-triggered mechanism is designed to schedule the communication instants for reducing communication cost. Simultaneously, for privacy preservation, a Hessian matrix with perturbed noise is introduced to quadratically approximate the objective function, which results in a closed form of primal vector update and then avoids solving a subproblem at each iteration with possible high computation cost. In addition, the triggered scheme is also utilized to schedule the update of Hessian, which can also reduce computation cost. We theoretically show that PC-DQM can protect privacy but without losing accuracy. In addition, we rigorously prove that PC-DQM converges linearly to the exact optimal solution for strongly convex and smooth objective functions. Finally, numerical simulation is presented to illustrate the effectiveness and efficiency of our algorithm.

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