Fast and accurate con-eigenvalue algorithm for optimal rational approximations
T. S. Haut, G. Beylkin

TL;DR
This paper introduces a fast, highly accurate algorithm for computing small con-eigenvalues and con-eigenvectors of positive-definite Cauchy matrices, enabling near-optimal rational approximations with minimal error.
Contribution
The authors develop a novel algorithm that accurately computes tiny con-eigenvalues of Cauchy matrices, improving over standard methods and enabling efficient rational approximation construction.
Findings
Algorithm computes con-eigenvalues in O(m^2 n) operations.
Achieves near-optimal rational approximations with errors close to machine precision.
Demonstrates high accuracy on functions with singularities and random matrices.
Abstract
The need to compute small con-eigenvalues and the associated con-eigenvectors of positive-definite Cauchy matrices naturally arises when constructing rational approximations with a (near) optimally small error. Specifically, given a rational function with poles in the unit disk, a rational approximation with poles in the unit disk may be obtained from the th con-eigenvector of an Cauchy matrix, where the associated con-eigenvalue gives the approximation error in the norm. Unfortunately, standard algorithms do not accurately compute small con-eigenvalues (and the associated con-eigenvectors) and, in particular, yield few or no correct digits for con-eigenvalues smaller than the machine roundoff. We develop a fast and accurate algorithm for computing con-eigenvalues and con-eigenvectors of positive-definite Cauchy…
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Taxonomy
TopicsMathematical functions and polynomials · Advanced Numerical Analysis Techniques · Matrix Theory and Algorithms
