Hochstenbach, Michiel E.; van der Vorst, Henk A. Alternatives to the Rayleigh quotient for the quadratic eigenvalue problem. (English) Zbl 1042.65028 SIAM J. Sci. Comput. 25, No. 2, 591-603 (2003). Summary: We consider the quadratic eigenvalue problem \(\lambda^2 Ax + \lambda Bx + Cx = 0.\) Suppose that \(u\) is an approximation to an eigenvector \(x\) (for instance, obtained by a subspace method) and that we want to determine an approximation to the corresponding eigenvalue \(\lambda\). The usual approach is to impose the Galerkin condition \(r(\theta, u) = (\theta^2 A + \theta B + C)u \perp u\), from which it follows that \(\theta\) must be one of the two solutions to the quadratic equation \((u^*Au) \theta^2 + (u^*Bu) \theta + (u^*Cu) = 0\). An unnatural aspect is that if \(u=x\), the second solution has in general no meaning. When \(u\) is not very accurate, it may not be clear which solution is the best. Moreover, when the discriminant of the equation is small, the solutions may be very sensitive to perturbations in \(u\). In this paper we therefore examine alternative approximations to \(\lambda\). We compare the approaches theoretically and by numerical experiments. The methods are extended to approximations from subspaces and to the polynomial eigenvalue problem. Cited in 8 Documents MSC: 65F15 Numerical computation of eigenvalues and eigenvectors of matrices 65F50 Computational methods for sparse matrices Keywords:quadratic eigenvalue problem; Rayleigh quotient; minimum residual; subspace method; polynomial eigenvalue problem; backward error; refining a Ritz pair; eigenvector; Galerkin condition; numerical experiments Software:JDQZ; JDQR; PHCpack; POLSYS_PLP PDFBibTeX XMLCite \textit{M. E. Hochstenbach} and \textit{H. A. van der Vorst}, SIAM J. Sci. Comput. 25, No. 2, 591--603 (2003; Zbl 1042.65028) Full Text: DOI