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On the solution of large-scale SDP problems by the modified barrier method using iterative solvers

机译:使用迭代求解器的改进势垒方法求解大规模SDP问题

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摘要

The limiting factors of second-order methods for large-scale semidefinite optimization are the storage and factorization of the Newton matrix. For a particular algorithm based on the modified barrier method, we propose to use iterative solvers instead of the routinely used direct factorization techniques. The preconditioned conjugate gradient method proves to be a viable alternative for problems with a large number of variables and modest size of the constrained matrix. We further propose to avoid explicit calculation of the Newton matrix either by an implicit scheme in the matrix-vector product or using a finite-difference formula. This leads to huge savings in memory requirements and, for certain problems, to further speed-up of the algorithm.
机译:大规模半确定性优化的二阶方法的限制因素是牛顿矩阵的存储和分解。对于基于改进的屏障方法的特定算法,我们建议使用迭代求解器,而不是通常使用的直接分解技术。事实证明,预处理的共轭梯度法是解决变量较大且约束矩阵大小适中的问题的可行选择。我们进一步建议避免通过矩阵向量乘积中的隐式方案或使用有限差分公式来显式计算牛顿矩阵。这样可以极大地节省内存需求,并且对于某些问题,还可以进一步提高算法的速度。

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