A Krylov-Schur approach to the truncated SVD

Computing a small number of singular values is required in many practical applications and it is therefore desirable to have efficient and robust methods that can generate such truncated singular value decompositions. A new method based on the Lanczos bidiagonalization and the Krylov-Schur method is...

全面介绍

书目详细资料
主要作者: Stoll, M
格式: Report
出版: Unspecified 2008
实物特征
总结:Computing a small number of singular values is required in many practical applications and it is therefore desirable to have efficient and robust methods that can generate such truncated singular value decompositions. A new method based on the Lanczos bidiagonalization and the Krylov-Schur method is presented. It is shown how deflation strategies can be easily implemented in this method and possible stopping criteria are discussed. Numerical experiments show that existing methods can be outperformed on a number of real world examples.