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An inexact perturbed path-following method for lagrangian decomposition in large-scale separable convex optimization

机译:大规模可分离凸优化中拉格朗日分解的不精确扰动路径跟踪方法

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This paper studies an inexact perturbed path-following algorithm in the framework of Lagrangian dual decomposition for solving large-scale separable convex programming problems. Unlike the exact versions considered in the literature, we propose solving the primal subproblems inexactly up to a given accuracy. This leads to an inexactness of the gradient vector and the Hessian matrix of the smoothed dual function. Then an inexact perturbed algorithm is applied to minimize the smoothed dual function. The algorithm consists of two phases, and both make use of the inexact derivative information of the smoothed dual problem. The convergence of the algorithm is analyzed, and the worst-case complexity is estimated. As a special case, an exact path-following decomposition algorithm is obtained and its worst-case complexity is given. Implementation details are discussed, and preliminary numerical results are reported.
机译:本文研究了在拉格朗日对偶分解框架下的不精确扰动路径跟踪算法,用于解决大规模可分离凸规划问题。与文献中考虑的确切版本不同,我们建议不精确地解决原始子问题,直至达到给定的精度。这导致梯度矢量和平滑对偶函数的Hessian矩阵不精确。然后应用不精确的扰动算法以最小化平滑对偶函数。该算法由两个阶段组成,并且都利用平滑对偶问题的不精确导数信息。分析了算法的收敛性,并估计了最坏情况下的复杂度。作为一种特殊情况,获得了精确的路径分解算法,并给出了最坏情况下的复杂度。讨论了实现细节,并报告了初步数值结果。

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