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On solving L-SR1 trust-region subproblems

机译:解决L-SR1信任区域子问题

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In this article, we consider solvers for large-scale trust-region subproblems when the quadratic model is defined by a limited-memory symmetric rank-one (L-SR1) quasi-Newton matrix. We propose a solver that exploits the compact representation of L-SR1 matrices. Our approach makes use of both an orthonormal basis for the eigenspace of the L-SR1 matrix and the Sherman-Morrison-Woodbury formula to compute global solutions to trust-region subproblems. To compute the optimal Lagrange multiplier for the trust-region constraint, we use Newton's method with a judicious initial guess that does not require safeguarding. A crucial property of this solver is that it is able to compute high-accuracy solutions even in the so-called hard case. Additionally, the optimal solution is determined directly by formula, not iteratively. Numerical experiments demonstrate the effectiveness of this solver.
机译:在本文中,我们考虑当二次模型由有限内存对称秩一(L-SR1)准牛顿矩阵定义时的大规模信任区域子问题的求解器。 我们提出了一种利用L-SR1矩阵的紧凑表示的求解器。 我们的方法对L-SR1矩阵的EIGenspace和Sherman-Morrison-Woodbury公式的异常依据利用了对抗,以将全球解决方案计算到信任区域子问题。 为了计算信任区域约束的最佳拉格朗日乘数,我们使用牛顿的方法具有不需要保障的明智初始猜测。 该求解器的关键性质是它即使在所谓的硬壳中也能够计算高精度解决方案。 另外,最佳解决方案由公式直接确定,不迭代地确定。 数值实验证明了该求解器的有效性。

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