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REFINED ITERATIVE ALGORITHMS BASED ON ARNOLDI PROCESS FOR LARGE UNSYMMETRIC EIGENPROBLEMS

机译:基于ARNOLDI过程的精细迭代算法,求解大型不对称特征问题

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摘要

Arnoldi's method has been popular for computing the small number of selected eigenvalues and the associated eigenvectors of large unsymmetric matrices. However, the approximate eigenvectors or Ritz vectors obtained by Arnoldi's method cannot be guaranteed to converge in theory even if the approximate eigenvalues or Ritz values do. In order to circumvent this potential danger, a new strategy is proposed that computes refined approximate eigenvectors by small sized singular value decompositions. It is shown that refined approximate eigenvectors converge to eigenvectors if Ritz values do. Moreover, the resulting refined algorithms converge more rapidly. We report some numerical experiments and compare the refined algorithms with their counterparts, the iterative Arnoldi and Arnoldi-Chebyshev algorithms. The results show that the refined algorithms are considerably more efficient than their counterparts. (C) Elsevier Science Inc., 1997. [References: 19]
机译:Arnoldi的方法已广泛用于计算少量的选定特征值和大的不对称矩阵的相关特征向量。但是,即使近似特征值或Ritz值确实存在,也不能保证通过Arnoldi方法获得的近似特征向量或Ritz向量在理论上收敛。为了避免这种潜在危险,提出了一种通过小规模奇异值分解计算精炼近似特征向量的新策略。结果表明,如果使用Ritz值,则精炼的近似特征向量会收敛到特征向量。而且,所得的改进算法收敛得更快。我们报告了一些数值实验,并将改进的算法与其对应的迭代Arnoldi和Arnoldi-Chebyshev算法进行了比较。结果表明,改进后的算法比同类算法效率更高。 (C)Elsevier Science Inc.,1997年。[参考:19]

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