A Chart of Numerical Methods for Structured Eigenvalue Problems

It is common in applied mathematics to encounter matrices that are symmetric, Hermitian, skew symmetric, skew Hermitian, symplectic, conjugate symplectic, $J$-symmetric, $J$-Hermitian, $J$-skew symmetric, or $J$-skew Hermitian. Eigenvalue algorithms for real and complex matrices that have at least t...

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Published inSIAM journal on matrix analysis and applications Vol. 13; no. 2; pp. 419 - 453
Main Authors Bunse-Gerstner, Angelika, Byers, Ralph, Mehrmann, Volker
Format Journal Article
LanguageEnglish
Published Philadelphia, PA Society for Industrial and Applied Mathematics 01.04.1992
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ISSN0895-4798
1095-7162
DOI10.1137/0613028

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Summary:It is common in applied mathematics to encounter matrices that are symmetric, Hermitian, skew symmetric, skew Hermitian, symplectic, conjugate symplectic, $J$-symmetric, $J$-Hermitian, $J$-skew symmetric, or $J$-skew Hermitian. Eigenvalue algorithms for real and complex matrices that have at least two such algebraic structures are considered. In the complex case numerically stable algorithms were found that preserve and exploit both structures of 40 out of the 66 pairs studied. Of the remaining 26, algorithms were found that preserve part of the structure of 12 pairs. In the real case algorithms were found for all pairs studied. The algorithms are constructed from a small set of numerical tools, including orthogonal reduction to Hessenberg form, simultaneous diagonalization of commuting normal matrices, Francis's QR algorithm, the quaternion QR-algorithm, and structure revealing, symplectic, unitary similarity transformations.
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ISSN:0895-4798
1095-7162
DOI:10.1137/0613028