The FEAST eigensolver is extended to the computation of the singular triplets of a large matrix $A$ with the singular values in a given interval. The resulting FEAST SVDsolver is subspace iteration applied to an approximate spectral projector of $A^TA$ corresponding to the desired singular values in a given interval, and constructs approximate left and right singular subspaces corresponding to the desired singular values, onto which $A$ is projected to obtain Ritz approximations. Differently from a commonly used contour integral-based FEAST solver, we propose a robust alternative that constructs approximate spectral projectors by using the Chebyshev--Jackson polynomial series, which are symmetric positive semi-definite with the eigenvalues ...
The symmetric eigenvalue decomposition and the singular value decomposition (SVD) are fundamental ma...
The symmetric eigenvalue decomposition and the singular value decomposition (SVD) are fundamental ma...
AbstractThe spectral decomposition of a symmetric matrix A with small off-diagonal and distinct diag...
The FEAST method for solving large sparse eigenproblems is equivalent to subspace iteration with an ...
The FEAST method for solving large sparse eigenproblems is equivalent to subspace iteration with an ...
AbstractComputing the singular values and vectors of a matrix is a crucial kernel in numerous scient...
Abstract. The computation of a few singular triplets of large, sparse matrices is a challenging task...
FEAST is a recently developed eigenvalue algorithm which computes selected interior eigenvalues of r...
We give the review of recent results in relative perturbation theory for eigenvalue and singular val...
Computing the singular values and vectors of a matrix is a crucial kernel in numerous scientific and...
We analyze the FEAST method for computing selected eigenvalues and eigenvectors of large sparse matr...
This thesis presents new hybrid restarted Lanczos methods for computing eigenpairs and singular trip...
AbstractSolving dense symmetric eigenvalue problems and computing singular value decompositions cont...
As ”big data” has increasing influence on our daily life and research activities, it poses significa...
A filtered subspace iteration for computing a cluster of eigenvalues and its accompanying eigenspace...
The symmetric eigenvalue decomposition and the singular value decomposition (SVD) are fundamental ma...
The symmetric eigenvalue decomposition and the singular value decomposition (SVD) are fundamental ma...
AbstractThe spectral decomposition of a symmetric matrix A with small off-diagonal and distinct diag...
The FEAST method for solving large sparse eigenproblems is equivalent to subspace iteration with an ...
The FEAST method for solving large sparse eigenproblems is equivalent to subspace iteration with an ...
AbstractComputing the singular values and vectors of a matrix is a crucial kernel in numerous scient...
Abstract. The computation of a few singular triplets of large, sparse matrices is a challenging task...
FEAST is a recently developed eigenvalue algorithm which computes selected interior eigenvalues of r...
We give the review of recent results in relative perturbation theory for eigenvalue and singular val...
Computing the singular values and vectors of a matrix is a crucial kernel in numerous scientific and...
We analyze the FEAST method for computing selected eigenvalues and eigenvectors of large sparse matr...
This thesis presents new hybrid restarted Lanczos methods for computing eigenpairs and singular trip...
AbstractSolving dense symmetric eigenvalue problems and computing singular value decompositions cont...
As ”big data” has increasing influence on our daily life and research activities, it poses significa...
A filtered subspace iteration for computing a cluster of eigenvalues and its accompanying eigenspace...
The symmetric eigenvalue decomposition and the singular value decomposition (SVD) are fundamental ma...
The symmetric eigenvalue decomposition and the singular value decomposition (SVD) are fundamental ma...
AbstractThe spectral decomposition of a symmetric matrix A with small off-diagonal and distinct diag...