Randomized Douglas–Rachford Methods for Linear Systems: Improved Accuracy and Efficiency
数学
数学优化
应用数学
算法
作者
Deren Han,Yansheng Su,Jiaxin Xie
出处
期刊:Siam Journal on Optimization [Society for Industrial and Applied Mathematics] 日期:2024-03-15卷期号:34 (1): 1045-1070
标识
DOI:10.1137/23m1567503
摘要
.The Douglas–Rachford (DR) method is a widely used method for finding a point in the intersection of two closed convex sets (feasibility problem). However, the method converges weakly, and the associated rate of convergence is hard to analyze in general. In addition, the direct extension of the DR method for solving more-than-two-sets feasibility problems, called the \(r\)-sets-DR method, is not necessarily convergent. To improve the efficiency of the optimization algorithms, the introduction of randomization and the momentum technique has attracted increasing attention. In this paper, we propose the randomized \(r\)-sets-DR (RrDR) method for solving the feasibility problem derived from linear systems, showing the benefit of the randomization as it brings linear convergence in expectation to the otherwise divergent \(r\)-sets-DR method. Furthermore, the convergence rate does not depend on the dimension of the coefficient matrix. We also study RrDR with heavy ball momentum and establish its accelerated rate. Numerical experiments are provided to confirm our results and demonstrate the notable improvements in accuracy and efficiency of the DR method brought by the randomization and the momentum technique.KeywordsDouglas–Rachfordrandomizationheavy ball momentumconvergence ratelinear systemsKaczmarz methodMSC codes90C2565F1065F2068W20