Time and space efficient generators for quasiseparable matrices
Clement Pernet (ARIC), Arne Storjohann

TL;DR
This paper introduces new efficient algorithms and representations for quasiseparable matrices, enhancing their use in exact linear algebra and related applications by leveraging sub-cubic matrix arithmetic.
Contribution
The paper develops novel structured representations and algorithms for quasiseparable matrices, improving computational efficiency and connecting to the rank profile matrix invariant.
Findings
New structured representations for quasiseparable matrices
Algorithms for fast matrix operations including inversion and multiplication
Enhanced efficiency over previous methods in exact linear algebra
Abstract
The class of quasiseparable matrices is defined by the property that any submatrix entirely below or above the main diagonal has small rank, namely below a bound called the order of quasiseparability. These matrices arise naturally in solving PDE's for particle interaction with the Fast Multi-pole Method (FMM), or computing generalized eigenvalues. From these application fields, structured representations and algorithms have been designed in numerical linear algebra to compute with these matrices in time linear in the matrix dimension and either quadratic or cubic in the quasiseparability order. Motivated by the design of the general purpose exact linear algebra library LinBox, and by algorithmic applications in algebraic computing, we adapt existing techniques introduce novel ones to use quasiseparable matrices in exact linear algebra, where sub-cubic matrix arithmetic is available. In…
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Taxonomy
TopicsMatrix Theory and Algorithms · Numerical Methods and Algorithms · Advanced Optimization Algorithms Research
