Volume 44, pp. 593-623, 2015.
SVD of Hankel matrices in Vandermonde-Cauchy product form
Zlatko Drmač
Abstract
Structured matrices of Cauchy, Vandermonde, Hankel, Toeplitz, and other types arise in a variety of applications, and their SVD decomposition provides key information, e.g., in various rational approximation tasks. In particular, Hankel matrices play an important role in the Adamyan-Arov-Krein and Carathéodory-Feyér rational approximation theories as well as in various applications in signal processing and control theory. This paper proposes new algorithms to compute the SVD of a Hankel matrix given implicitly as the product $\mathcal{V}^T D \mathcal{V}$, where $\mathcal{V}$ is a complex Vandermonde matrix and $D$ is a diagonal matrix. The key steps are the discrete Fourier transform and the computation of the SVD of $\mathcal{C}^T \widetilde{D}\mathcal{C}$, where $\mathcal{C}$ is a Cauchy matrix and $\widetilde{D}$ is diagonal. This SVD is computed by a specially tailored version of the Jacobi SVD for products of matrices. Error and perturbation analysis and numerical experiments confirm the robustness of the proposed algorithms, capable of computing to high relative accuracy all singular values in the full range of machine numbers.
Full Text (PDF) [773 KB], BibTeX
Key words
Cauchy matrix, discrete Fourier transform, eigenvalues, Hankel matrix, Jacobi method, rational approximations, singular value decomposition, Toeplitz matrix, Vandermonde matrix
AMS subject classifications
15A09, 15A12, 15A18, 15A23, 65F15, 65F22, 65F35
Links to the cited ETNA articles
[29] | Vol. 38 (2011), pp. 146-167 Pedro Gonnet, Ricardo Pachón, and Lloyd N. Trefethen: Robust rational interpolation and least-squares |
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