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Solving Mixed Sparse-Dense Linear Least-Squares Problems by Preconditioned Iterative Methods
Author(s) -
J. A. Scott,
Miroslav Tůma
Publication year - 2017
Publication title -
siam journal on scientific computing
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 1.674
H-Index - 147
eISSN - 1095-7197
pISSN - 1064-8275
DOI - 10.1137/16m1108339
Subject(s) - row , preconditioner , solver , conjugate gradient method , mathematics , factorization , matrix (chemical analysis) , linear system , least squares function approximation , row and column spaces , iterative method , algorithm , mathematical optimization , computer science , mathematical analysis , statistics , materials science , database , estimator , composite material
The efficient solution of large linear least-squares problems in which the system matrix $A$ contains rows with very different densities is challenging. Previous work has focused on direct methods for problems in which $A$ has a few relatively dense rows. These rows are initially ignored, a factorization of the sparse part is computed using a sparse direct solver, and then the solution is updated to take account of the omitted dense rows. In some practical applications the number of dense rows can be significant, and for very large problems, using a direct solver may not be feasible. We propose processing rows that are identified as dense separately within a conjugate gradient method using an incomplete factorization preconditioner combined with the factorization of a dense matrix of size equal to the number of dense rows. Numerical experiments on large-scale problems from real applications are used to illustrate the effectiveness of our approach. The results demonstrate that we can efficiently solve prob...

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