Abstract. The computation of a few singular triplets of large, sparse matrices is a challenging task, especially when the smallest magnitude singular values are needed in high accuracy. Most recent efforts try to address this problem through variations of the Lanczos bidiagonalization method, but algorithmic research is ongoing and without production level software. We develop a high quality SVD software on top of the state-of-the-art eigensolver PRIMME that can take advantage of preconditioning, and of PRIMME’s nearly-optimal methods and full functionality to compute both largest and smallest singular triplets. Accuracy and efficiency is achieved through a hybrid, two-stage meta-method, primme svds. In the first stage, primme svds solves t...
<div><p>We present a new computational approach to approximating a large, noisy data table by a low-...
We present new O(n 3 ) algorithms to compute very accurate SVDs of Cauchy matrices, Vandermonde ma...
As ”big data” has increasing influence on our daily life and research activities, it poses significa...
This project aims to enhance the functionality, performance, algorithms, and applicability of the PR...
The singular value decomposition (SVD) is a fundamental matrix decomposition in linear algebra. It i...
In this thesis, we develop four numerical methods for computing the singular value decomposition (SV...
We describe the design and implementation of a new algorithm for computing the singular value decomp...
: We compare the block-Lanczos and the Davidson methods for computing a basis of a singular subspace...
The singular values of a matrix are conventionally computed using either the bidiagonalization algo...
For the accurate approximation of the minimal singular triple (singular value and left and right sin...
The goal of this survey is to give a view of the state-of-the-art of computing the Singular Value De...
This paper deals with the Singular Value Decomposition (SVD) of 3x3 matrices. A customized algorithm...
The FEAST eigensolver is extended to the computation of the singular triplets of a large matrix $A$ ...
In this paper, we propose a new algorithm for computing a singular value decomposition of a product ...
AbstractWe combine our novel SVD-free additive preconditioning with aggregation and other relevant t...
<div><p>We present a new computational approach to approximating a large, noisy data table by a low-...
We present new O(n 3 ) algorithms to compute very accurate SVDs of Cauchy matrices, Vandermonde ma...
As ”big data” has increasing influence on our daily life and research activities, it poses significa...
This project aims to enhance the functionality, performance, algorithms, and applicability of the PR...
The singular value decomposition (SVD) is a fundamental matrix decomposition in linear algebra. It i...
In this thesis, we develop four numerical methods for computing the singular value decomposition (SV...
We describe the design and implementation of a new algorithm for computing the singular value decomp...
: We compare the block-Lanczos and the Davidson methods for computing a basis of a singular subspace...
The singular values of a matrix are conventionally computed using either the bidiagonalization algo...
For the accurate approximation of the minimal singular triple (singular value and left and right sin...
The goal of this survey is to give a view of the state-of-the-art of computing the Singular Value De...
This paper deals with the Singular Value Decomposition (SVD) of 3x3 matrices. A customized algorithm...
The FEAST eigensolver is extended to the computation of the singular triplets of a large matrix $A$ ...
In this paper, we propose a new algorithm for computing a singular value decomposition of a product ...
AbstractWe combine our novel SVD-free additive preconditioning with aggregation and other relevant t...
<div><p>We present a new computational approach to approximating a large, noisy data table by a low-...
We present new O(n 3 ) algorithms to compute very accurate SVDs of Cauchy matrices, Vandermonde ma...
As ”big data” has increasing influence on our daily life and research activities, it poses significa...