For the accurate approximation of the minimal singular triple (singular value and left and right singular vector) of a large sparse matrix, we may use two separate search spaces, one for the left, and one for the right singular vector. In Lanczos bidiagonalization, for example, such search spaces are constructed. In SIAM J. Sci. Comput., 23(2) (2002), pp. 606–628, the author proposes a Jacobi–Davidson type method for the singular value problem, where solutions to certain correction equations are used to expand the search spaces. As noted in the mentioned paper, the standard Galerkin subspace extraction works well for the computation of large singular triples, but may lead to unsatisfactory approximations to small and interior triples. To ov...
Computing the k dominant singular values of a matrix A by computing the singular value decomposition...
The problem of computing a few of the largest or smallest singular values and associated singular ve...
A partial reorthogonalization procedure (BPRO) for maintaining semi-orthogonality among the left and...
For the accurate approximation of the minimal singular triple (singular value and left and right sin...
Abstract. The harmonic Lanczos bidiagonalization method can be used to compute the smallest singular...
AbstractWe compare the block Lanczos and the Davidson methods for computing a basis of a singular su...
AbstractIn this paper, an improved algorithm PSVD for computing the singular subspace of a matrix co...
We compare the block-Lanczos and the Davidson methods for computing a basis of a singular subspace a...
Low rank approximation of large and/or sparse rectangular matrices is a very import ant topic in man...
Abstract. The computation of a few singular triplets of large, sparse matrices is a challenging task...
: We compare the block-Lanczos and the Davidson methods for computing a basis of a singular subspace...
In this note, we analyze the influence of the regularization procedure applied to singular LS square...
Given a large square matrix $A$ and a sufficiently regular function $f$ so that $f(A)$ is well defin...
The standard approach to computing an approximate SVD of a large-scale matrix is to project it onto ...
In this thesis, we develop four numerical methods for computing the singular value decomposition (SV...
Computing the k dominant singular values of a matrix A by computing the singular value decomposition...
The problem of computing a few of the largest or smallest singular values and associated singular ve...
A partial reorthogonalization procedure (BPRO) for maintaining semi-orthogonality among the left and...
For the accurate approximation of the minimal singular triple (singular value and left and right sin...
Abstract. The harmonic Lanczos bidiagonalization method can be used to compute the smallest singular...
AbstractWe compare the block Lanczos and the Davidson methods for computing a basis of a singular su...
AbstractIn this paper, an improved algorithm PSVD for computing the singular subspace of a matrix co...
We compare the block-Lanczos and the Davidson methods for computing a basis of a singular subspace a...
Low rank approximation of large and/or sparse rectangular matrices is a very import ant topic in man...
Abstract. The computation of a few singular triplets of large, sparse matrices is a challenging task...
: We compare the block-Lanczos and the Davidson methods for computing a basis of a singular subspace...
In this note, we analyze the influence of the regularization procedure applied to singular LS square...
Given a large square matrix $A$ and a sufficiently regular function $f$ so that $f(A)$ is well defin...
The standard approach to computing an approximate SVD of a large-scale matrix is to project it onto ...
In this thesis, we develop four numerical methods for computing the singular value decomposition (SV...
Computing the k dominant singular values of a matrix A by computing the singular value decomposition...
The problem of computing a few of the largest or smallest singular values and associated singular ve...
A partial reorthogonalization procedure (BPRO) for maintaining semi-orthogonality among the left and...