A novel partitioning method for accelerating the block cimmino algorithm

FS Torun, M Manguoglu, C Aykanat - SIAM Journal on Scientific Computing, 2018 - SIAM
SIAM Journal on Scientific Computing, 2018SIAM
We propose a novel block-row partitioning method in order to improve the convergence rate
of the block Cimmino algorithm for solving general sparse linear systems of equations. The
convergence rate of the block Cimmino algorithm depends on the orthogonality among the
block rows obtained by the partitioning method. The proposed method takes numerical
orthogonality among block rows into account by proposing a row inner-product graph model
of the coefficient matrix. In the graph partitioning formulation defined on this graph model …
We propose a novel block-row partitioning method in order to improve the convergence rate of the block Cimmino algorithm for solving general sparse linear systems of equations. The convergence rate of the block Cimmino algorithm depends on the orthogonality among the block rows obtained by the partitioning method. The proposed method takes numerical orthogonality among block rows into account by proposing a row inner-product graph model of the coefficient matrix. In the graph partitioning formulation defined on this graph model, the partitioning objective of minimizing the cutsize directly corresponds to minimizing the sum of interblock inner products between block rows thus leading to an improvement in the eigenvalue spectrum of the iteration matrix. This in turn leads to a significant reduction in the number of iterations required for convergence. Extensive experiments conducted on a large set of matrices confirm the validity of the proposed method against a state-of-the-art method.
Society for Industrial and Applied Mathematics
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