首页> 外文期刊>Operations Research Letters: A Journal of the Operations Research Society of America >RECOVERY OF PRIMAL SOLUTIONS WHEN USING SUBGRADIENT OPTIMIZATION METHODS TO SOLVE LAGRANGIAN DUALS OF LINEAR PROGRAMS
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RECOVERY OF PRIMAL SOLUTIONS WHEN USING SUBGRADIENT OPTIMIZATION METHODS TO SOLVE LAGRANGIAN DUALS OF LINEAR PROGRAMS

机译:使用次优优化方法求解线性规划的拉格朗日对数时的原始解的恢复

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摘要

Lagrangian duality is a frequently used technique for solving specially structured linear programs or for solving linear programming relaxations of nonconvex discrete or continuous problems within a branch-and-bound approach. In such cases, subgradient optimization methods provide a valuable tool for obtaining quick solutions to the Lagrangian dual problem. However, little is known or available for directly obtaining primal solutions via such a dual optimization process without resorting to penalty functions, or tangential approximation schemes, or the solution of auxiliary primal systems. This paper presents a class of procedures to recover primal solutions directly from the information generated in the process of using pure or deflected subgradient optimization methods to solve such Lagrangian dual formulations, Our class of procedure is shown to subsume two existing schemes of this type that have been proposed in the context of pure subgradient approaches under restricted step size strategies. [References: 14]
机译:拉格朗日对偶性是一种常用的技术,用于求解特殊结构的线性程序或用于求解分支定界方法中非凸离散或连续问题的线性程序松弛。在这种情况下,次梯度优化方法为获得拉格朗日对偶问题的快速解决方案提供了宝贵的工具。然而,很少知道或可用于通过这种双重优化过程直接获得基本解而不求助于罚函数,切向近似方案或辅助基本系统的解。本文提出了一类程序,可以直接从使用纯或偏转次梯度优化方法来求解这种拉格朗日对偶公式的过程中生成的信息中恢复原始解。我们的程序类别显示为包含两种现有的此类在限制步长策略下,在纯次梯度方法的背景下提出了一些建议。 [参考:14]

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