64 research outputs found

    Symmetric indefinite factorization of quasidefinite matrices

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    Matrices with special structures arise in numerous applications. In some cases, such as quasidefinite matrices or their generalizations, we can exploit this special structure. If the matrix H is quasidefinite, we propose a new variant of the symmetric indefinite factorization. We show that linear system Hz = b, H quasidefinite with a special structure, can be interpreted as an equilibrium system. So, even if some blocks in H are ill--conditioned, the important part of solution vector z can be accurately computed. In the case of a generalized quasidefinite matrix, we derive bounds on number of its positive and negative eigenvalues

    Estimates for the spectral condition number of cardinal B-spline collocation matrices

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    The famous de Boor conjecture states that the condition of the polynomial B-spline collocation matrix at the knot averages is bounded independently of the knot sequence, i.e., it depends only on the spline degree. For highly nonuniform knot meshes, like geometric meshes, the conjecture is known to be false. As an effort towards finding an answer for uniform meshes, we investigate the spectral condition number of cardinal B-spline collocation matrices. Numerical testing strongly suggests that the conjecture is true for cardinal B-splines

    A Kogbetliantz-type algorithm for the hyperbolic SVD

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    In this paper a two-sided, parallel Kogbetliantz-type algorithm for the hyperbolic singular value decomposition (HSVD) of real and complex square matrices is developed, with a single assumption that the input matrix, of order nn, admits such a decomposition into the product of a unitary, a non-negative diagonal, and a JJ-unitary matrix, where JJ is a given diagonal matrix of positive and negative signs. When J=Ā±IJ=\pm I, the proposed algorithm computes the ordinary SVD. The paper's most important contribution -- a derivation of formulas for the HSVD of 2Ɨ22\times 2 matrices -- is presented first, followed by the details of their implementation in floating-point arithmetic. Next, the effects of the hyperbolic transformations on the columns of the iteration matrix are discussed. These effects then guide a redesign of the dynamic pivot ordering, being already a well-established pivot strategy for the ordinary Kogbetliantz algorithm, for the general, nƗnn\times n HSVD. A heuristic but sound convergence criterion is then proposed, which contributes to high accuracy demonstrated in the numerical testing results. Such a JJ-Kogbetliantz algorithm as presented here is intrinsically slow, but is nevertheless usable for matrices of small orders.Comment: a heavily revised version with 32 pages and 4 figure

    Implicit Hariā€“Zimmermann algorithm for the generalized SVD on the GPUs

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    A parallel, blocked, one-sided Hariā€“Zimmermann algorithm for the generalized singular value decomposition (GSVD) of a real or a complex matrix pair (F,G) is here proposed, where F and G have the same number of columns, and are both of the full column rank. The algorithm targets either a single graphics processing unit (GPU), or a cluster of those, performs all non-trivial computation exclusively on the GPUs, requires the minimal amount of memory to be reasonably expected, scales acceptably with the increase of the number of GPUs available, and guarantees the reproducible, bitwise identical output of the runs repeated over the same input and with the same number of GPUs

    Mladen Rogina (1957. āˆ’ 2013.)

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    Perturbation bounds for singular values of matrices with singletons

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    Orthosymmetric block rotations

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