New methods for calculations of the lowest eigenvalues of the real symmetric generalized eigenvalue problem (Q1578093)
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scientific article; zbMATH DE number 1496462
| Language | Label | Description | Also known as |
|---|---|---|---|
| English | New methods for calculations of the lowest eigenvalues of the real symmetric generalized eigenvalue problem |
scientific article; zbMATH DE number 1496462 |
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New methods for calculations of the lowest eigenvalues of the real symmetric generalized eigenvalue problem (English)
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26 June 2001
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The author proposes a new method to find the smallest eigenvalue and the corresponding eigenvector of the generalized eigenvalue problem \(AX=\lambda BX\), where \(A\) and \(B\) are real symmetric matrices, and \(B\) is also positive definite. The method proceeds iteratively, and at each step it solves the problem in a subspace, then enlarges the subspace by means of the solution of the Newton secant equation, with the data from the subspace solution, when Newton's method is applied to find a solution that minimizes \[ \rho(X)= \frac{(X,AX)}{(X,BX)}. \] The method and some variants are tested in various examples and the convergence results are similar to those obtained by means of the Jacobi-Davidson method.
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generalized eigenvalue problem
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smallest eigenvalue
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Krylov subspace method
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Newton method
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comparison of methods
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numerical examples
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convergence
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Jacobi-Davidson method
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0.9023331
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0.8883324
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