Analysis of eigenvalue condition numbers for a class of randomized numerical methods for singular matrix pencils.

BIT Numer Math

Faculty of Mathematics and Physics, University of Ljubljana, and Institute of Mathematics, Physics and Mechanics, Jadranska 19, 1000 Ljubljana, Slovenia.

Published: July 2024

AI Article Synopsis

  • The numerical solution of generalized eigenvalue problems for singular matrix pencils is complex due to discontinuities in eigenvalues.
  • Recent methods proposed by Hochstenbach, Mehl, and Plestenjak aim to transform singular pencil matrices into regular forms using randomized modifications while preserving finite eigenvalues.
  • The study demonstrates that these transformations maintain numerical stability and offer insights into the advantages of using complex random matrices over real ones for enhanced stability in computations.

Article Abstract

The numerical solution of the generalized eigenvalue problem for a singular matrix pencil is challenging due to the discontinuity of its eigenvalues. Classically, such problems are addressed by first extracting the regular part through the staircase form and then applying a standard solver, such as the QZ algorithm, to that regular part. Recently, several novel approaches have been proposed to transform the singular pencil into a regular pencil by relatively simple randomized modifications. In this work, we analyze three such methods by Hochstenbach, Mehl, and Plestenjak that modify, project, or augment the pencil using random matrices. All three methods rely on the normal rank and do not alter the finite eigenvalues of the original pencil. We show that the eigenvalue condition numbers of the transformed pencils are unlikely to be much larger than the -weak eigenvalue condition numbers, introduced by Lotz and Noferini, of the original pencil. This not only indicates favorable numerical stability but also reconfirms that these condition numbers are a reliable criterion for detecting simple finite eigenvalues. We also provide evidence that, from a numerical stability perspective, the use of complex instead of real random matrices is preferable even for real singular matrix pencils and real eigenvalues. As a side result, we provide sharp left tail bounds for a product of two independent random variables distributed with the generalized beta distribution of the first kind or Kumaraswamy distribution.

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Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC11249782PMC
http://dx.doi.org/10.1007/s10543-024-01033-wDOI Listing

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