Preconditioning of linear least squares by robust incomplete factorization for implicitly held normal equations

  • ID: 2752, RIV: 10331039
  • ISSN: 1064-8275, ISBN: not specified
  • source: SIAM Journal of Scientific Computing
  • keywords: sparse matrices; sparse linear systems; indefnite symmetric systems; iterative solvers; preconditioning; incomplete factorization
  • authors: Jennifer Scott, Miroslav Tůma
  • authors from KNM: Tůma Miroslav

Abstract

The ecient solution of the normal equations corresponding to a large sparse linear least squares problem can be extremely challenging. Robust incomplete factorization (RIF) preconditioners represent one approach that has the important feature of computing an incomplete LLT factorization of the normal equations matrix without having to form the normal matrix itself. The right-looking implementation of Benzi and Tuma has been used in a number of studies but experience has shown that in some cases it can be computationally slow and its memory requirements are not known a priori. Here a new left-looking variant is presented that employs a symbolic preprocessing step to replace the potentially expensive searching through entries of the normal matrix. This involves a directed acyclic graph (DAG) that is computed as the computation proceeds. An inexpensive but eective pruning algorithm is proposed to limit the number of edges in the DAG. Problems arising from practical applications are used to compare the performance of the right-looking approach with a left-looking implementation that computes the normal matrix explicitly and our new implicit DAG-based left-looking variant.