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On regularizing effects of MINRES and MR-II for large scale symmetric discrete ill-posed problems

机译:关于钟形和MR-II对大规模对称离散疾病问题的规范作用

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For large scale symmetric discrete ill-posed problems, MINRES and MR-II are often used iterative regularization solvers. We call a regularized solution best possible if it is at least as accurate as the best regularized solution obtained by the truncated singular value decomposition (TSVD) method. In this paper, we analyze their regularizing effects and establish the following results: (i) the filtered SVD expression are derived for the regularized solutions by MINRES; (ii) a hybrid MINRES that uses explicit regularization within projected problems is needed to compute a best possible regularized solution to a given ill-posed problem; (iii) the kth iterate by MINRES is more accurate than the (k - 1)th iterate by MR-II until the semi-convergence of MINRES, but MR-II has globally better regularizing effects than MINRES; (iv) bounds are obtained for the 2-norm distance between an underlying k-dimensional Krylov subspace and the k-dimensional dominant eigenspace. They show that MR-II has better regularizing effects for severely and moderately ill-posed problems than for mildly ill-posed problems, and a hybrid MR-II is needed to get a best possible regularized solution for mildly ill-posed problems; (v) bounds are derived for the entries generated by the symmetric Lanczos process that MR-II is based on, showing how fast they decay. Numerical experiments confirm our assertions. Stronger than our theory, the regularizing effects of MR-II are experimentally shown to be good enough to obtain best possible regularized solutions for severely and moderately ill-posed problems. (C) 2017 Elsevier B.V. All rights reserved.
机译:对于大规模对称离散不适定问题,MINRES法和MR-II通常用于迭代正解算器。我们所说的正则溶液如果是最好的至少为准确如由截断奇异值分解(TSVD)方法获得了最好的正则化的解决方案。在本文中,我们分析其正规化效果和建立了如下结果:(i)所述过滤SVD表达式导出用于通过MINRES法的正则解; (ⅱ)混合使用投影问题内明确的正则化,需要以计算最佳的正则溶液到一个给定的病态问题MINRES法; (iii)所述第k迭代通过MINRES法比第(k - 1)更准确的第迭代通过MR-II直到MINRES法的半收敛,但MR-II具有较好的全局比正规化效果MINRES法; (ⅳ)界限为底层k维Krylov子空间和所述k维特征空间优势之间的2范数距离获得。它们表明,MR-II具有更好的为正规化严重影响和适度比轻度病态问题的病态问题,需要一个混合MR-II获得适用于轻度病态问题最佳的正则化解; (v)的边界被衍生为通过对称的Lanczos过程中产生的条目MR-II是基于,示出它们如何快速衰减。数值实验证实了我们的断言。强于我们的理论,MR-II的规则化效应实验证明是不够好,以获得严重和中度病态问题,最好的则解。 (c)2017年Elsevier B.V.保留所有权利。

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