By Daniel Kressner
This ebook is set computing eigenvalues, eigenvectors, and invariant subspaces of matrices. remedy contains generalized and based eigenvalue difficulties and all important features of eigenvalue computations. a distinct function is the precise remedy of based eigenvalue difficulties, supplying perception on accuracy and potency earnings to be anticipated from algorithms that take the constitution of a matrix into account.
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Numerical Methods for General and Structured Eigenvalue Problems: 46 (Lecture Notes in Computational Science and Engineering) by Daniel Kressner