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Interior-Point Lagrangian Decomposition Method for Separable Convex Optimization

机译:可分离凸优化的内点拉格朗日分解法

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In this paper, we propose a distributed algorithm for solving large-scale separable convex problems using Lagrangian dual decomposition and the interior-point framework. By adding self-concordant barrier terms to the ordinary Lagrangian, we prove under mild assumptions that the corresponding family of augmented dual functions is self-concordant. This makes it possible to efficiently use the Newton method for tracing the central path. We show that the new algorithm is globally convergent and highly parallelizable and thus it is suitable for solving large-scale separable convex problems. Keywords Separable convex optimization - Self-concordant functions - Interior-point methods - Augmented Lagrangian decomposition - Parallel computations Communicated by D.Q. Mayne.
机译:本文提出了一种使用拉格朗日对偶分解和内点框架求解大规模可分离凸问题的分布式算法。通过在普通的拉格朗日数上添加自洽障碍项,我们在温和的假设下证明了相应的增强对偶函数族是自洽的。这使得可以有效地使用牛顿法来追踪中心路径。我们表明,该新算法具有全局收敛性和高度可并行性,因此适用于解决大规模可分离凸问题。可分离凸优化-自和函数-内点方法-增强拉格朗日分解-并行计算梅恩。

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