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Enhanced algebraic substructuring for symmetric generalized eigenvalue problems
Authors:Vassilis Kalantzis  Lior Horesh
Institution:Thomas J. Watson Research Center, IBM Research, Yorktown Heights, New York, USA
Abstract:This article proposes a new substructuring algorithm to approximate the algebraically smallest eigenvalues and corresponding eigenvectors of a symmetric positive-definite matrix pencil ( A , M ) $$ \left(A,M\right) $$ . The proposed approach partitions the graph associated with ( A , M ) $$ \left(A,M\right) $$ into a number of algebraic substructures and builds a Rayleigh–Ritz projection subspace by combining spectral information associated with the interior and interface variables of the algebraic domain. The subspace associated with interior variables is built by computing substructural eigenvectors and truncated Neumann series expansions of resolvent matrices. The subspace associated with interface variables is built by computing eigenvectors and associated leading derivatives of linearized spectral Schur complements. The proposed algorithm can take advantage of multilevel partitionings when the size of the pencil. Experiments performed on problems stemming from discretizations of model problems showcase the efficiency of the proposed algorithm and verify that adding eigenvector derivatives can enhance the overall accuracy of the approximate eigenpairs, especially those associated with eigenvalues located near the origin.
Keywords:algebraic substructuring  Neumann series  spectral Schur complements  symmetric generalized eigenvalue problems  Taylor series
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