ON THE DIVERGENCE OF DECENTRALIZED NONCONVEX OPTIMIZATION

被引:4
|
作者
Hong, M. I. N. G. Y. I. [1 ]
Zeng, S. I. L. I. A. N. G. [1 ]
Zhang, J. U. N. Y. U. [2 ]
Sun, H. A. O. R. A. N. [1 ]
机构
[1] Univ Minnesota Twin Cities, Dept ECE, Minneapolis, MN 55455 USA
[2] Natl Univ Singapore, Dept ISEM, Singapore 119007, Singapore
关键词
decentralized optimization; nonconvex problems; Lipschitz continuous gradient; DISTRIBUTED OPTIMIZATION; CONVERGENCE; ALGORITHM; STRATEGIES;
D O I
10.1137/20M1353149
中图分类号
O29 [应用数学];
学科分类号
070104 ;
摘要
agents jointly optimize the nonconvex objective function f(u) := 1/N\sumN Abstract. In this work, we study a generic class of decentralized algorithms in which N i=1 fi(u), while only communicating with their neighbors. This class of problems has become popular in modeling many signal processing and decentralized machine learning applications, and efficient algorithms have been proposed for such a type of problem. However, most of the existing decentralized algorithms require that the local function gradients V fi's as well as the average function gradient Vf are Lipschitz, that is, the local Lipschitz conditions (LLC) and global Lipschitz condition (GLC) are satisfied. In this work, we first demonstrate the importance of the above Lipschitzness assumptions on the state-of-the-art decentralized algorithms. First, by constructing a series of examples, we show that when the LLC on the local function gradient V fi's are not satisfied, a number of state-of-the-art decentralized algorithms diverge, even if the global Lipschitz condition (GLC) still holds. This observation brings out a fundamental theoretical issue of the existing decentralized algorithms---their convergence conditions are strictly stronger than centralized algorithms such as the gradient descent, which only requires the GLC. Our observation raises an important open question: How to design decentralized algorithms when the LLC, or even the GLC, is not satisfied? To address this question, we design two first-order algorithms, which are capable of computing stationary solutions of the original problem with neither the LLC nor the GLC condition. In particular, we show that the proposed algorithms converge sublinearly to a certain \epsilon -stationary solution, where the precise rate depends on various algorithmic and problem parameters. In particular, if the local function fi's are lower bounded Qth order polynomials, then the rate becomes 0(1/\epsilonQ-1) for Q \geq 2 (where the 0 notation hides some constants such as dependency on the network topology). Such a rate is tight for the special case of Q = 2 where each fi satisfies LLC. To our knowledge, this is the first attempt that studies decentralized nonconvex optimization problems with neither the LLC nor the GLC.
引用
收藏
页码:2879 / 2908
页数:30
相关论文
共 50 条
  • [21] ADAPTIVE FISTA FOR NONCONVEX OPTIMIZATION
    Ochs, Peter
    Pock, Thomas
    SIAM JOURNAL ON OPTIMIZATION, 2019, 29 (04) : 2482 - 2503
  • [22] Optimal gradient tracking for decentralized optimization
    Song, Zhuoqing
    Shi, Lei
    Pu, Shi
    Yan, Ming
    MATHEMATICAL PROGRAMMING, 2024, 207 (1-2) : 1 - 53
  • [23] Private and Robust Distributed Nonconvex Optimization via Polynomial Approximation
    He, Zhiyu
    He, Jianping
    Chen, Cailian
    Guan, Xinping
    IEEE TRANSACTIONS ON CONTROL OF NETWORK SYSTEMS, 2024, 11 (03): : 1679 - 1691
  • [24] An Improved Convergence Analysis for Decentralized Online Stochastic Non-Convex Optimization
    Xin, Ran
    Khan, Usman A.
    Kar, Soummya
    IEEE TRANSACTIONS ON SIGNAL PROCESSING, 2021, 69 : 1842 - 1858
  • [25] Dynamics based privacy preservation in decentralized optimization
    Gao, Huan
    Wang, Yongqiang
    Nedic, Angelia
    AUTOMATICA, 2023, 151
  • [26] Differentially Private Decentralized Optimization With Relay Communication
    Wang, Luqing
    Guo, Luyao
    Yang, Shaofu
    Shi, Xinli
    IEEE TRANSACTIONS ON INFORMATION FORENSICS AND SECURITY, 2025, 20 : 724 - 736
  • [27] PARALLEL AND DISTRIBUTED METHODS FOR NONCONVEX OPTIMIZATION
    Scutari, G.
    Facchinei, F.
    Lampariello, L.
    Song, P.
    2014 IEEE INTERNATIONAL CONFERENCE ON ACOUSTICS, SPEECH AND SIGNAL PROCESSING (ICASSP), 2014,
  • [28] Communication Compression for Distributed Nonconvex Optimization
    Yi, Xinlei
    Zhang, Shengjun
    Yang, Tao
    Chai, Tianyou
    Johansson, Karl Henrik
    IEEE TRANSACTIONS ON AUTOMATIC CONTROL, 2023, 68 (09) : 5477 - 5492
  • [29] Distributed Nonconvex Optimization over Networks
    Di Lorenzo, Paolo
    Scutari, Gesualdo
    2015 IEEE 6TH INTERNATIONAL WORKSHOP ON COMPUTATIONAL ADVANCES IN MULTI-SENSOR ADAPTIVE PROCESSING (CAMSAP), 2015, : 229 - 232
  • [30] Distributed stochastic nonsmooth nonconvex optimization
    Kungurtsev, Vyacheslav
    OPERATIONS RESEARCH LETTERS, 2022, 50 (06) : 627 - 631