학술논문

Quantized Distributed Gradient Tracking Algorithm With Linear Convergence in Directed Networks
Document Type
Periodical
Source
IEEE Transactions on Automatic Control IEEE Trans. Automat. Contr. Automatic Control, IEEE Transactions on. 68(9):5638-5645 Sep, 2023
Subject
Signal Processing and Analysis
Quantization (signal)
Convergence
Optimization
Distributed algorithms
Technological innovation
Radio frequency
Graph theory
Directed networks
distributed optimization
gradient tracking algorithm
quantized communication
Language
ISSN
0018-9286
1558-2523
2334-3303
Abstract
Communication efficiency is a major bottleneck in the applications of distributed networks. To address the problem, the problem of quantized distributed optimization has attracted a lot of attention. However, most of the existing quantized distributed optimization algorithms can only converge sublinearly. To achieve linear convergence, this article proposes a novel quantized distributed gradient tracking algorithm (Q-DGT) to minimize a finite sum of local objective functions over directed networks. Moreover, we explicitly derive lower bounds for the number of quantization levels, and prove that Q-DGT can converge linearly even when the exchanged variables are respectively quantized with three quantization levels. Numerical results also confirm the efficiency of the proposed algorithm.