Random Reshuffling: Simple Analysis with Vast Improvements

被引:0
|
作者
Mishchenko, Konstantin [1 ]
Khaled, Ahmed [2 ]
Richtarik, Peter [1 ]
机构
[1] KAUST, Thuwal, Saudi Arabia
[2] Cairo Univ, Cairo, Egypt
关键词
CONVERGENCE;
D O I
暂无
中图分类号
TP18 [人工智能理论];
学科分类号
081104 ; 0812 ; 0835 ; 1405 ;
摘要
Random Reshuffling (RR) is an algorithm for minimizing finite-sum functions that utilizes iterative gradient descent steps in conjunction with data reshuffling. Often contrasted with its sibling Stochastic Gradient Descent (SGD), RR is usually faster in practice and enjoys significant popularity in convex and non-convex optimization. The convergence rate of RR has attracted substantial attention recently and, for strongly convex and smooth functions, it was shown to converge faster than SGD if 1) the stepsize is small, 2) the gradients are bounded, and 3) the number of epochs is large. We remove these 3 assumptions, improve the dependence on the condition number from k(2) to k (resp. from k to root k) and, in addition, show that RR has a different type of variance. We argue through theory and experiments that the new variance type gives an additional justification of the superior performance of RR. To go beyond strong convexity, we present several results for non-strongly convex and non-convex objectives. We show that in all cases, our theory improves upon existing literature. Finally, we prove fast convergence of the Shuffle-Once (SO) algorithm, which shuffles the data only once, at the beginning of the optimization process. Our theory for strongly convex objectives tightly matches the known lower bounds for both RR and SO and substantiates the common practical heuristic of shuffling once or only a few times. As a byproduct of our analysis, we also get new results for the Incremental Gradient algorithm (IG), which does not shuffle the data at all.
引用
收藏
页数:12
相关论文
共 50 条
  • [1] Random Reshuffling is Not Always Better
    De Sa, Christopher
    ADVANCES IN NEURAL INFORMATION PROCESSING SYSTEMS 33, NEURIPS 2020, 2020, 33
  • [2] Random Reshuffling with Variance Reduction: New Analysis and Better Rates
    Malinovsky, Grigory
    Sailanbayev, Alibek
    Richtarik, Peter
    UNCERTAINTY IN ARTIFICIAL INTELLIGENCE, 2023, 216 : 1347 - 1357
  • [3] Proximal and Federated Random Reshuffling
    Mishchenko, Konstantin
    Khaled, Ahmed
    Richtarik, Peter
    INTERNATIONAL CONFERENCE ON MACHINE LEARNING, VOL 162, 2022,
  • [4] Distributed Random Reshuffling Over Networks
    Huang, Kun
    Li, Xiao
    Milzarek, Andre
    Pu, Shi
    Qiu, Junwen
    IEEE TRANSACTIONS ON SIGNAL PROCESSING, 2023, 71 : 1143 - 1158
  • [5] ON THE PERFORMANCE OF RANDOM RESHUFFLING IN STOCHASTIC LEARNING
    Ying, Bicheng
    Yuan, Kun
    Vlaski, Stefan
    Sayed, Ali H.
    2017 INFORMATION THEORY AND APPLICATIONS WORKSHOP (ITA), 2017,
  • [6] Distributed Random Reshuffling Methods with Improved Convergence
    Huang, Kun
    Zhou, Linli
    Pu, Shi
    arXiv, 2023,
  • [8] Why random reshuffling beats stochastic gradient descent
    Gurbuzbalaban, M.
    Ozdaglar, A.
    Parrilo, P. A.
    MATHEMATICAL PROGRAMMING, 2021, 186 (1-2) : 49 - 84
  • [9] Why random reshuffling beats stochastic gradient descent
    M. Gürbüzbalaban
    A. Ozdaglar
    P. A. Parrilo
    Mathematical Programming, 2021, 186 : 49 - 84
  • [10] Variance-Reduced Stochastic Learning Under Random Reshuffling
    Ying, Bicheng
    Yuan, Kun
    Sayed, Ali H.
    IEEE TRANSACTIONS ON SIGNAL PROCESSING, 2020, 68 : 1390 - 1408