Quantized Distributed Gradient Tracking Algorithm with Linear Convergence in Directed Networks
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 paper 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 the update rule for the number of quantization levels, and prove that Q-DGT can converge linearly even when the exchanged variables are respectively one bit. Numerical results also confirm the efficiency of the proposed algorithm.
Cite
@article{arxiv.2104.03649,
title = {Quantized Distributed Gradient Tracking Algorithm with Linear Convergence in Directed Networks},
author = {Yongyang Xiong and Ligang Wu and Keyou You and Lihua Xie},
journal= {arXiv preprint arXiv:2104.03649},
year = {2022}
}
Comments
Accepted by IEEE Transactions on Automatic Control as a technical note