A new approximate inverse preconditioner based on the Vaidya’s maximum spanning tree for matrix equation AXB = C
DOI10.22067/ijnao.v9i2.70454OpenAlexW3123922120MaRDI QIDQ3389578
Kamran Rezaei, Faezeh Toutounian, Freydoon Rahbarnia
Publication date: 23 March 2022
Full work available at URL: https://ijnao.um.ac.ir/article_24842_e22c32b5a5cb091fd78c57bee9ba2c50.pdf
Krylov subspace methodsmatrix equationapproximate inverse preconditionerglobal conjugate gradientsupport graph preconditionerVaidya's maximum spanning tree preconditioner
Computational methods for sparse matrices (65F50) Iterative numerical methods for linear systems (65F10) Preconditioners for iterative methods (65F08) Numerical methods for matrix equations (65F45)
Uses Software
Cites Work
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