A randomized algorithm for computing a so-called UTV factorization efficiently is presented. Given a matrix , the algorithm “randUTV” computes a factorization , where and have orthonormal columns, and is triangular (either upper or lower, whichever is preferred). The algorithm randUTV is developed primarily to be a fast and easily parallelized alternative to algorithms for computing the Singular Value Decomposition (SVD). randUTV provides accuracy very close to that of the SVD for problems such as low-rank approximation, solving ill-conditioned linear systems, and determining bases for various subspaces associated with the matrix. Moreover, randUTV produces highly accurate approximations to the singular values of . Unlike the SVD, the ra...
A new algorithm of Demmel et al. for computing the singular value decomposition (SVD) to high relati...
This thesis contains my work on Spectrum-revealing randomized matrix algorithms. This thesis has bee...
We propose new effective randomized algorithms for some fundamental matrix computations such as prec...
A randomized algorithm for computing a so-called UTV factorization efficiently is presented. Given a...
A randomized algorithm for computing a so-called UTV factorization efficiently is presented. Given a...
Randomized singular value decomposition (RSVD) is by now a well-established technique for efficientl...
The purpose of this text is to provide an accessible introduction to a set of recently developed alg...
The purpose of this text is to provide an accessible introduction to a set of recently developed alg...
Rank-revealing ULV and URV factorizations are useful tools to determine the rank and to compute ...
Matrices of huge size and low rank are encountered in applications from the real world where large s...
Randomized algorithms for low-rank matrix approximation are investigated, with the emphasis on the f...
Randomized algorithms for low-rank matrix approximation are investigated, with the emphasis on the f...
The development of randomized algorithms for numerical linear algebra, e.g. for computing approximat...
The pivoted QLP decomposition is computed through two consecutive pivoted QR decompositions, and pro...
AbstractA new algorithm of Demmel et al. for computing the singular value decomposition (SVD) to hig...
A new algorithm of Demmel et al. for computing the singular value decomposition (SVD) to high relati...
This thesis contains my work on Spectrum-revealing randomized matrix algorithms. This thesis has bee...
We propose new effective randomized algorithms for some fundamental matrix computations such as prec...
A randomized algorithm for computing a so-called UTV factorization efficiently is presented. Given a...
A randomized algorithm for computing a so-called UTV factorization efficiently is presented. Given a...
Randomized singular value decomposition (RSVD) is by now a well-established technique for efficientl...
The purpose of this text is to provide an accessible introduction to a set of recently developed alg...
The purpose of this text is to provide an accessible introduction to a set of recently developed alg...
Rank-revealing ULV and URV factorizations are useful tools to determine the rank and to compute ...
Matrices of huge size and low rank are encountered in applications from the real world where large s...
Randomized algorithms for low-rank matrix approximation are investigated, with the emphasis on the f...
Randomized algorithms for low-rank matrix approximation are investigated, with the emphasis on the f...
The development of randomized algorithms for numerical linear algebra, e.g. for computing approximat...
The pivoted QLP decomposition is computed through two consecutive pivoted QR decompositions, and pro...
AbstractA new algorithm of Demmel et al. for computing the singular value decomposition (SVD) to hig...
A new algorithm of Demmel et al. for computing the singular value decomposition (SVD) to high relati...
This thesis contains my work on Spectrum-revealing randomized matrix algorithms. This thesis has bee...
We propose new effective randomized algorithms for some fundamental matrix computations such as prec...