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A matrix generation approach for eigenvalue optimization

机译:特征值优化的矩阵生成方法

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摘要

We study the extension of a column generation technique to nonpolyhedral models. In particular, we study the problem of minimizing the maximum eigenvalue of an affine combination of symmetric matrices. At each step of the algorithm a restricted master problem in the primal space, corresponding to the relaxed dual (original) problem, is formed. A query point is obtained as an approximate analytic center of a bounded set that contains the optimal solution of the dual problem. The original objective function is evaluated at the query point, and depending on its differentiability a column or a matrix is added to the restricted master problem. We discuss the issues of recovering feasibility after the restricted master problem is updated by a column or a matrix. The computational experience of implementing the algorithm on randomly generated problems are reported and the cpu time of the matrix generation algorithm is compared with that of the primal-dual interior point methods on dense and sparse problems using the software SDPT3. Our numerical results illustrate that the matrix generation algorithm outperforms primal-dual interior point methods on dense problems with no structure and also on a class of sparse problems.
机译:我们研究了将列生成技术扩展到非多面体模型。特别地,我们研究使对称矩阵的仿射组合的最大特征值最小化的问题。在算法的每个步骤中,在原始空间中形成一个受限的主问题,对应于松弛对偶(原始)问题。获取查询点作为包含对偶问题的最佳解的有界集的近似分析中心。原始目标函数在查询点进行评估,并根据其可微性将列或矩阵添加到受限的主问题中。我们讨论了通过列或矩阵更新受限主问题后恢复可行性的问题。报告了在随机产生的问题上实现该算法的计算经验,并使用软件SDPT3将矩阵生成算法的cpu时间与原始对偶内点方法在密集和稀疏问题上的cpu时间进行了比较。我们的数值结果表明,在没有结构的稠密问题和一类稀疏问题上,矩阵生成算法的性能均优于原始-对偶内点法。

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