Randomized Sketching of Nonlinear Eigenvalue Problems

Stefan Güttel, Daniel Kressner, Bart Vandereycken

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Abstract

Rational approximation is a powerful tool to obtain accurate surrogates for nonlinear functions that are easy to evaluate and linearize. The interpolatory adaptive Antoulas–Anderson (AAA) method is one approach to construct such approximants numerically. For large-scale vector- and matrix-valued functions, however, the direct application of the set-valued variant of AAA becomes inefficient. We propose and analyze a new sketching approach for such functions called sketchAAA that, with high probability, leads to much better approximants than previously suggested approaches while retaining efficiency. The sketching approach works in a black-box fashion where only evaluations of the nonlinear function at sampling points are needed. Numerical tests with nonlinear eigenvalue problems illustrate the efficacy of our approach, with speedups over 200 for sampling large-scale black-box functions without sacrificing accuracy.
Original languageEnglish
Pages (from-to)A3022-A3043
JournalSIAM Journal on Scientific Computing
Volume46
Issue number5
Early online date24 Sept 2024
DOIs
Publication statusPublished - 1 Oct 2024

Keywords

  • rational approximation
  • randomization
  • sketching
  • nonlinear eigenvalue problem

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