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A practical method for solving large-scale TRS

机译:解决大规模TRS的实用方法

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We present a nearly-exact method for the large scale trust region subproblem (TRS) based on the properties of the minimal-memory BFGS method. Our study is concentrated in the case where the initial BFGS matrix can be any scaled identity matrix. The proposed method is a variant of the Moré–Sorensen method that exploits the eigenstructure of the approximate Hessian B, and incorporates both the standard and the hard case. The eigenvalues of B are expressed analytically, and consequently a direction of negative curvature can be computed immediately by performing a sequence of inner products and vector summations. Thus, the hard case is handled easily while the Cholesky factorization is completely avoided. An extensive numerical study is presented, for covering all the possible cases arising in the TRS with respect to the eigenstructure of B. Our numerical experiments confirm that the method is suitable for very large scale problems.
机译:我们基于最小内存BFGS方法的性质,为大规模信任区域子问题(TRS)提出了一种几乎精确的方法。我们的研究集中在初始BFGS矩阵可以是任何缩放的单位矩阵的情况下。所提出的方法是Moré-Sorensen方法的一种变体,它利用近似Hessian B的特征结构,并结合了标准情况和困难情况。 B的特征值通过解析表示,因此可以通过执行一系列内积和矢量求和立即计算负曲率的方向。因此,在完全避免了Cholesky因式分解的同时,可以轻松处理难题。提出了广泛的数值研究,以涵盖与B的本征结构有关的TRS中可能出现的所有情况。我们的数值实验证实,该方法适用于非常大的问题。

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