Distributed Stochastic Gradient Tracking Algorithm With Variance Reduction for Non-Convex Optimization

Xia Jiang, Xianlin Zeng*, Jian Sun, Jie Chen

*Corresponding author for this work

Research output: Contribution to journalArticlepeer-review

13 Citations (Scopus)

Abstract

This article proposes a distributed stochastic algorithm with variance reduction for general smooth non-convex finite-sum optimization, which has wide applications in signal processing and machine learning communities. In distributed setting, a large number of samples are allocated to multiple agents in the network. Each agent computes local stochastic gradient and communicates with its neighbors to seek for the global optimum. In this article, we develop a modified variance reduction technique to deal with the variance introduced by stochastic gradients. Combining gradient tracking and variance reduction techniques, this article proposes a distributed stochastic algorithm, gradient tracking algorithm with variance reduction (GT-VR), to solve large-scale non-convex finite-sum optimization over multiagent networks. A complete and rigorous proof shows that the GT-VR algorithm converges to the first-order stationary points with O(1/k) convergence rate. In addition, we provide the complexity analysis of the proposed algorithm. Compared with some existing first-order methods, the proposed algorithm has a lower O(PMϵ-1) gradient complexity under some mild condition. By comparing state-of-the-art algorithms and GT-VR in numerical simulations, we verify the efficiency of the proposed algorithm.

Original languageEnglish
Pages (from-to)5310-5321
Number of pages12
JournalIEEE Transactions on Neural Networks and Learning Systems
Volume34
Issue number9
DOIs
Publication statusPublished - 1 Sept 2023

Keywords

  • Complexity analysis
  • distributed algorithm
  • non-convex finite-sum optimization
  • stochastic gradient
  • variance reduction

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