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首页> 外文期刊>Computational optimization and applications >Local nonglobal minima for solving large-scale extended trust-region subproblems
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Local nonglobal minima for solving large-scale extended trust-region subproblems

机译:局部非农球最小值解决大规模扩展信托区域子问题

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We study large-scale extended trust-region subproblems (eTRS) i.e., the minimization of a general quadratic function subject to a norm constraint, known as the trust-region subproblem (TRS) but with an additional linear inequality constraint. It is well known that strong duality holds for the TRS and that there are efficient algorithms for solving large-scale TRS problems. It is also known that there can exist at most one local non-global minimizer (LNGM) for TRS. We combine this with known characterizations for strong duality for eTRS and, in particular, connect this with the so-called hard case for TRS. We begin with a recent characterization of the minimum for the TRS via a generalized eigenvalue problem and extend this result to the LNGM. We then use this to derive an efficient algorithm that finds the global minimum for eTRS by solving at most three generalized eigenvalue problems.
机译:我们研究大规模的扩展信任区域子问题(ETRS)即,最小化通用二次函数,其受规范约束的常规约束,称为信任区域子问题(TRS),但具有额外的线性不等式约束。 众所周知,强大的二元性对TRS保持并且有高效的算法来解决大规模TRS问题。 还已知可以存在于TRS的大多数本地非全球最小化器(LNGM)中存在。 我们将其与已知的特征相结合,以便对ETRS的强大二元性,特别是将此连接到TRS所谓的硬壳。 我们首先通过广义特征值问题开始对TRS的最小值,并将其结果扩展到LNGM。 然后,我们使用它来派生一个高效的算法,通过解决大多数三个广义特征值问题来找到ETR的全局最小值。

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