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Efficient eigenvalue computation for quasiseparable Hermitian matrices under low rank perturbations
Authors:Yuli Eidelman  Luca Gemignani  Israel Gohberg
Affiliation:(1) Raymond and Beverly Sackler Faculty of Exact Sciences, Tel-Aviv University, Ramat-Aviv, Israel;(2) Dipartimento di Matematica, Università di Pisa, Pisa, Italy
Abstract:In this paper we address the problem of efficiently computing all the eigenvalues of a large N×N Hermitian matrix modified by a possibly non Hermitian perturbation of low rank. Previously proposed fast adaptations of the QR algorithm are considerably simplified by performing a preliminary transformation of the matrix by similarity into an upper Hessenberg form. The transformed matrix can be specified by a small set of parameters which are easily updated during the QR process. The resulting structured QR iteration can be carried out in linear time using linear memory storage. Moreover, it is proved to be backward stable. Numerical experiments show that the novel algorithm outperforms available implementations of the Hessenberg QR algorithm already for small values of N.
Keywords:QR eigenvalue algorithm  Quasiseparable matrices  Hessenberg reduction  Complexity
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