Fixed-polynomial approximate spectral transformations for preconditioning the eigenvalue problem
[摘要] Arnoldi;;s method is often used to compute a few eigenvalues and eigenvectors of large, sparse matrices. When the eigenvalues of interest are not dominant or well-separated, this method may suffer from slow convergence. Spectral transformations are a common acceleration technique that address this issue by introducing a modified eigenvalue problem that is easier to solve than the original. This modified problem accentuates the eigenvalues of interest, but requires solving a linear system, which is computationally expensive for large-scale eigenvalue problems. This thesis shows how this expense can be reduced through a preconditioning scheme that uses a fixed-polynomial operator to approximate the spectral transformation. Implementation details and accuracy heuristics for employing a fixed-polynomial operator with Arnoldi;;s method are discussed. The computational results presented indicate that this preconditioning scheme is a promising approach for solving large-scale eigenvalue problems. Furthermore, this approach extends the domain of applications for current Arnoldi-based software. Future research directions include development of convergence theory, accuracy bounds for computed eigenpairs, and alternative constructions of the fixed-polynomial operator.
[发布日期] [发布机构] Rice University
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