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Iteration-complexity of first-order augmented Lagrangian methods for convex programming

机译:凸规划的一阶扩充拉格朗日方法的迭代复杂性

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摘要

This paper considers a special class of convex programming (CP) problems whose feasible regions consist of a simple compact convex set intersected with an affine manifold. We present first-order methods for this class of problems based on an inexact version of the classical augmented Lagrangian (AL) approach, where the subproblems are approximately solved by means of Nesterov's optimal method. We then establish a bound on the total number of Nesterov's optimal iterations, i.e., the inner iterations, performed throughout the entire inexact AL method to obtain a near primal-dual optimal solution. We also present variants with possibly better iteration-complexity bounds than the original inexact AL method, which consist of applying the original approach directly to a perturbed problem obtained by adding a strongly convex component to the objective function of the CP problem.
机译:本文考虑一类特殊的凸规划(CP)问题,其可行区域由与仿射流形相交的简单紧致凸集组成。我们基于经典增强拉格朗日(AL)方法的不精确版本,针对此类问题提供一阶方法,其中子问题通过Nesterov的最优方法近似解决。然后,我们在整个不精确的AL方法中执行的Nesterov最佳迭代总数(即内部迭代)的数量上建立一个界限,以获得接近原始对偶的最佳解。我们还提出了比原始不精确AL方法具有更好的迭代复杂性边界的变体,变体包括将原始方法直接应用于通过向CP问题的目标函数添加强凸分量而获得的扰动问题。

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