Volume 23, pp. 158-179, 2006.
On fast factorization pivoting methods for sparse symmetric indefinite systems
Olaf Schenk and Klaus Gärtner
Abstract
This paper discusses new pivoting factorization methods for solving sparse symmetric indefinite systems. As opposed to many existing pivoting methods, our Supernode–Bunch–Kaufman (SBK) pivoting method dynamically selects $1\times1$ and $2\times2$ pivots and may be supplemented by pivot perturbation techniques. We demonstrate the effectiveness and the numerical accuracy of this algorithm and also show that a high performance implementation is feasible. We will also show that symmetric maximum-weighted matching strategies add an additional level of reliability to SBK. These techniques can be seen as a complement to the alternative idea of using more complete pivoting techniques during the numerical factorization. Numerical experiments validate these conclusions.
Full Text (PDF) [822 KB], BibTeX
Key words
direct solver, pivoting, sparse matrices, graph algorithms, symmetric indefinite matrix, interior point optimization
AMS subject classifications
65F05, 65F50, 05C85
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