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Adaptive inexact fast augmented Lagrangian methods for constrained convex optimization

机译:适应性不适的快速增强拉格朗日方法,用于约束凸优化

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In this paper we study two inexact fast augmented Lagrangian algorithms for solving linearly constrained convex optimization problems. Our methods rely on a combination of the excessive-gap-like smoothing technique introduced in Nesterov (SIAM J Optim 16(1):235-249, 2005) and the general inexact oracle framework studied in Devolder (Math Program 146:37-75, 2014). We develop and analyze two augmented based algorithmic instances with constant and adaptive smoothness parameters, and derive a total computational complexity estimate in terms of projections on a simple primal feasible set for each algorithm. For the constant parameter algorithm we obtain the overall computational complexity of order , while for the adaptive one we obtain total number of projections onto the primal feasible set in order to achieve an -optimal solution for the original problem.
机译:本文研究了两个不精确的快速增强拉格朗日算法,用于解决线性约束的凸优化问题。 我们的方法依赖于Nesterov中引入的过度差距状的平滑技术的组合(Siam J Optim 16(1):235-249,2005)和在Devolder中研究的一般不精确的Oracle框架(数学程序146:37-75 ,2014)。 我们使用常量和自适应平滑度参数开发和分析两个增强的算法实例,并在每种算法的简单原始可行集合中导出总计算复杂性估计。 对于恒定参数算法,我们获得了顺序的整体计算复杂度,而对于自适应之一,我们将投影的总数获得到原始可行集合上,以便实现原始问题的optimal解决方案。

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