Limited-memory polynomial methods for large-scale matrix functions

Q1 Mathematics GAMM Mitteilungen Pub Date : 2020-09-10 DOI:10.1002/gamm.202000019
Stefan Güttel, Daniel Kressner, Kathryn Lund
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引用次数: 11

Abstract

Matrix functions are a central topic of linear algebra, and problems requiring their numerical approximation appear increasingly often in scientific computing. We review various limited-memory methods for the approximation of the action of a large-scale matrix function on a vector. Emphasis is put on polynomial methods, whose memory requirements are known or prescribed a priori. Methods based on explicit polynomial approximation or interpolation, as well as restarted Arnoldi methods, are treated in detail. An overview of existing software is also given, as well as a discussion of challenging open problems.

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大规模矩阵函数的有限记忆多项式方法
矩阵函数是线性代数的一个中心主题,在科学计算中需要它们的数值近似的问题越来越多地出现。我们回顾了各种有限记忆的方法来逼近大规模矩阵函数对向量的作用。重点放在多项式方法,其内存需求是已知的或预先规定的。详细讨论了基于显式多项式近似或插值的方法以及重新启动的Arnoldi方法。对现有软件的概述也给出了,以及具有挑战性的开放问题的讨论。
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来源期刊
GAMM Mitteilungen
GAMM Mitteilungen Mathematics-Applied Mathematics
CiteScore
8.80
自引率
0.00%
发文量
23
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