首页> 外文期刊>SIAM Journal on Optimization: A Publication of the Society for Industrial and Applied Mathematics >ON THE CONVERGENCE OF ALTERNATING MINIMIZATION FOR CONVEX PROGRAMMING WITH APPLICATIONS TO ITERATIVELY REWEIGHTED LEAST SQUARES AND DECOMPOSITION SCHEMES
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ON THE CONVERGENCE OF ALTERNATING MINIMIZATION FOR CONVEX PROGRAMMING WITH APPLICATIONS TO ITERATIVELY REWEIGHTED LEAST SQUARES AND DECOMPOSITION SCHEMES

机译:关于凸规划的最小化收敛性及其在迭代加权最小二乘和分解方案上的应用

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This paper is concerned with the alternating minimization (AM) method for solving convex minimization problems where the decision variables vector is split into two blocks. The objective function is a sum of a differentiable convex function and a separable (possibly) nonsmooth extended real-valued convex function, and consequently constraints can be incorporated. We analyze the convergence rate of the method and establish a nonasymptotic sublinear rate of convergence where the multiplicative constant depends on the minimal block Lipschitz constant. We then analyze the iteratively reweighted least squares (IRLS) method for solving convex problems involving sums of norms. Based on the results derived for the AM method, we establish a nonasymptotic sublinear rate of convergence of the IRLS method. In addition, we show an asymptotic rate of convergence whose efficiency estimate does not depend on the data of the problem. Finally, we study the convergence properties of a decomposition-based approach designed to solve a composite convex model.
机译:本文涉及交替最小化(AM)方法,用于解决凸最小化问题,其中决策变量矢量分为两个块。目标函数是可微凸函数和可分离(可能)非平滑扩展实值凸函数之和,因此可以合并约束。我们分析了该方法的收敛速度,并建立了一个非渐近亚线性收敛速度,其中乘法常数取决于最小块Lipschitz常数。然后,我们分析迭代加权最小二乘(IRLS)方法来解决涉及范数和的凸问题。基于针对AM方法得出的结果,我们建立了IRLS方法的非渐近亚线性收敛速度。此外,我们显示了渐近收敛速度,其效率估计不取决于问题的数据。最后,我们研究了一种用于求解复合凸模型的基于分解的方法的收敛性。

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