A Comparison of the LR and QR Transformations for Finding the Eigenvalues for Real Nonsymmetric Matrices

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Release : 1966
Genre : Algorithms
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A Comparison of the LR and QR Transformations for Finding the Eigenvalues for Real Nonsymmetric Matrices - read free eBook in online reader or directly download on the web page. Select files or add your book in reader. Download and read online ebook A Comparison of the LR and QR Transformations for Finding the Eigenvalues for Real Nonsymmetric Matrices write by Susan Clara Hanson. This book was released on 1966. A Comparison of the LR and QR Transformations for Finding the Eigenvalues for Real Nonsymmetric Matrices available in PDF, EPUB and Kindle. "The LR and QR algorithms, two of the best available iterative methods for finding the eigenvalues of a nonsymmetric matrix associated with a system of linear homogeneous equations, are studied. These algorithms are discussed as they apply to the determination of the eigenvalues of real nonsymmetric matrices. A comparison of the speed and accuracy of these transformations is made. A detailed discussion of the criterion for convergence and the numerical difficulties which may occur in the computation of multiple and complex conjugate eigenvalues are included. The results of this study indicate that the QR algorithm is the more successful method for finding the eigenvalues of a real nonsymmetric matrix"--Abstract, leaf ii.

A First Course in Numerical Analysis

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Release : 2001-01-01
Genre : Mathematics
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Book Rating : 546/5 ( reviews)

A First Course in Numerical Analysis - read free eBook in online reader or directly download on the web page. Select files or add your book in reader. Download and read online ebook A First Course in Numerical Analysis write by Anthony Ralston. This book was released on 2001-01-01. A First Course in Numerical Analysis available in PDF, EPUB and Kindle. Outstanding text, oriented toward computer solutions, stresses errors in methods and computational efficiency. Problems — some strictly mathematical, others requiring a computer — appear at the end of each chapter.

Eigenvalue Algorithms for Symmetric Hierarchical Matrices

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Release : 2012
Genre : Mathematics
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Eigenvalue Algorithms for Symmetric Hierarchical Matrices - read free eBook in online reader or directly download on the web page. Select files or add your book in reader. Download and read online ebook Eigenvalue Algorithms for Symmetric Hierarchical Matrices write by Thomas Mach. This book was released on 2012. Eigenvalue Algorithms for Symmetric Hierarchical Matrices available in PDF, EPUB and Kindle. This thesis is on the numerical computation of eigenvalues of symmetric hierarchical matrices. The numerical algorithms used for this computation are derivations of the LR Cholesky algorithm, the preconditioned inverse iteration, and a bisection method based on LDL factorizations. The investigation of QR decompositions for H-matrices leads to a new QR decomposition. It has some properties that are superior to the existing ones, which is shown by experiments using the HQR decompositions to build a QR (eigenvalue) algorithm for H-matrices does not progress to a more efficient algorithm than the LR Cholesky algorithm. The implementation of the LR Cholesky algorithm for hierarchical matrices together with deflation and shift strategies yields an algorithm that require O(n) iterations to find all eigenvalues. Unfortunately, the local ranks of the iterates show a strong growth in the first steps. These H-fill-ins makes the computation expensive, so that O(n³) flops and O(n²) storage are required. Theorem 4.3.1 explains this behavior and shows that the LR Cholesky algorithm is efficient for the simple structured Hl-matrices. There is an exact LDLT factorization for Hl-matrices and an approximate LDLT factorization for H-matrices in linear-polylogarithmic complexity. This factorizations can be used to compute the inertia of an H-matrix. With the knowledge of the inertia for arbitrary shifts, one can compute an eigenvalue by bisectioning. The slicing the spectrum algorithm can compute all eigenvalues of an Hl-matrix in linear-polylogarithmic complexity. A single eigenvalue can be computed in O(k²n log^4 n). Since the LDLT factorization for general H-matrices is only approximative, the accuracy of the LDLT slicing algorithm is limited. The local ranks of the LDLT factorization for indefinite matrices are generally unknown, so that there is no statement on the complexity of the algorithm besides the numerical results in Table 5.7. The preconditioned inverse iteration computes the smallest eigenvalue and the corresponding eigenvector. This method is efficient, since the number of iterations is independent of the matrix dimension. If other eigenvalues than the smallest are searched, then preconditioned inverse iteration can not be simply applied to the shifted matrix, since positive definiteness is necessary. The squared and shifted matrix (M-mu I)² is positive definite. Inner eigenvalues can be computed by the combination of folded spectrum method and PINVIT. Numerical experiments show that the approximate inversion of (M-mu I)² is more expensive than the approximate inversion of M, so that the computation of the inner eigenvalues is more expensive. We compare the different eigenvalue algorithms. The preconditioned inverse iteration for hierarchical matrices is better than the LDLT slicing algorithm for the computation of the smallest eigenvalues, especially if the inverse is already available. The computation of inner eigenvalues with the folded spectrum method and preconditioned inverse iteration is more expensive. The LDLT slicing algorithm is competitive to H-PINVIT for the computation of inner eigenvalues. In the case of large, sparse matrices, specially tailored algorithms for sparse matrices, like the MATLAB function eigs, are more efficient. If one wants to compute all eigenvalues, then the LDLT slicing algorithm seems to be better than the LR Cholesky algorithm. If the matrix is small enough to be handled in dense arithmetic (and is not an Hl(1)-matrix), then dense eigensolvers, like the LAPACK function dsyev, are superior. The H-PINVIT and the LDLT slicing algorithm require only an almost linear amount of storage. They can handle larger matrices than eigenvalue algorithms for dense matrices. For Hl-matrices of local rank 1, the LDLT slicing algorithm and the LR Cholesky algorithm need almost the same time for the computation of all eigenvalues. For large matrices, both algorithms are faster than the dense LAPACK function dsyev.

Existence, Uniqueness, and Convergence of the Basic LR and QR Transformations

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Release : 1970
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Existence, Uniqueness, and Convergence of the Basic LR and QR Transformations - read free eBook in online reader or directly download on the web page. Select files or add your book in reader. Download and read online ebook Existence, Uniqueness, and Convergence of the Basic LR and QR Transformations write by Wesley Yoneo Watanabe. This book was released on 1970. Existence, Uniqueness, and Convergence of the Basic LR and QR Transformations available in PDF, EPUB and Kindle.

KWIC Index for Numerical Algebra

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Release : 1972
Genre : Algebra
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KWIC Index for Numerical Algebra - read free eBook in online reader or directly download on the web page. Select files or add your book in reader. Download and read online ebook KWIC Index for Numerical Algebra write by Alston Scott Householder. This book was released on 1972. KWIC Index for Numerical Algebra available in PDF, EPUB and Kindle.