Decentralized Optimization in Networks: Algorithmic Efficiency and Privacy Preservation

by Qingguo Lu, Xiaofeng Liao, Huaqing Li, Shaojiang Deng, Yantao Li, and Keke Zhang

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Book cover for Decentralized Optimization in Networks

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Decentralized algorithms are useful for solving large-scale complex optimization problems, which not only alleviate the single-point resource bottleneck problem of centralized algorithms, but also possess higher scalability. Decentralized Optimization in Networks: Algorithmic Efficiency and Privacy Preservation provides the reader with theoretical foundations, practical guidance, and problem-solving approaches to decentralized optimization. It teaches how to apply decentralized optimization algorithms to improve optimization efficiency (communication efficiency, computational efficiency, fast convergence), solve large-scale problems (training for large-scale datasets), achieve privacy preservation (effectively counter external eavesdropping attacks, differential attacks, etc), and overcome a range of challenges in complex decentralized network environments (random sleep, random link failures, time-varying, directed, etc). It focuses on: 1) communication-efficiency: event-triggered communication, random link failures, zeroth-order gradients. 2) computation-efficiency: variance-reduction, Polyak’s projection, stochastic gradient, random sleep. 3) privacy preservation: differential privacy, edge-based correlated perturbations, conditional noises. It uses simulation results, including practical application examples, to illustrate the effectiveness and the practicability of decentralized optimization algorithms.
  • ISBN13 9780443333378
  • Publish Date 1 September 2025
  • Publish Status Forthcoming
  • Publish Country US
  • Publisher Elsevier Science & Technology
  • Imprint Morgan Kaufmann Publishers In
  • Format Paperback
  • Pages 300
  • Language English