4.5 Article

Bounds for norms of the matrix inverse and the smallest singular value

Journal

LINEAR ALGEBRA AND ITS APPLICATIONS
Volume 429, Issue 10, Pages 2589-2601

Publisher

ELSEVIER SCIENCE INC
DOI: 10.1016/j.laa.2007.12.026

Keywords

M-Matrices; Diagonal dominance; Matrix norms; Singular values

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In the first part, we obtain two easily calculable lower bounds for parallel to A(-1)parallel to, where parallel to.parallel to is an arbitrary matrix norm, in the case when A is an M-matrix, using first row sums and then column sums. Using those results, we obtain the characterization of M-matrices whose inverses are stochastic matrices. With different approach, we give another easily calculable lower bounds for parallel to A(-1)parallel to infinity and parallel to A(-1)parallel to(1) in the case when A is an M-matrix. In the second part, using the results from the first part, we obtain our main result, an easily calculable upper bound for parallel to A(-1)parallel to(1) in the case when A is an SDD matrix, thus improving the known bound. All mentioned norm bounds can be used for bounding the smallest singular value of a matrix. (C) 2008 Elsevier Inc. All rights reserved.

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