The hierarchical (H-) matrix format allows storing a variety of dense matrices from certain applications in a special data-sparse way with linear-polylogarithmic complexity. Many operations from linear algebra like matrix-matrix and matrix-vector products, matrix inversion and LU decomposition can be implemented efficiently using the H-matrix format. Due to its importance in solving many problems in numerical linear algebra like least-squares problems, it is also desirable to have an efficient QR decomposition of H-matrices. In the past, two different approaches for this task have been suggested. We will review the resulting methods and suggest a new algorithm to compute the QR decomposition of an H-matrix. Like other H-arithmetic opera...
The QR-algorithm is a popular numerical method for the computation of eigenvalues of matrices. All e...
International audienceThe Tall-Skinny QR (TSQR) algorithm is more communication efficient than the s...
Hermitian plus possibly non-Hermitian low rank matrices can be efficiently reduced into Hessenberg f...
The hierarchical (<i>H-</i>) matrix format allows storing a variety of dense matrices from certain a...
The efficient and accurate QR decomposition for matrices with hierarchical low-rank structures, such...
Abstract. In this paper, we consider a class of hierarchically rank structured matrices that include...
In previous papers hierarchical matrices were introduced which are data-sparse and allow an approxim...
Hierarchical matrix (H-matrix) techniques can be used to efficiently treat dense matrices. With an H...
The QR-algorithm is a renowned method for computing all eigenvalues of an arbitrary matrix. A prelim...
This thesis is on the numerical computation of eigenvalues of symmetric hierarchical matrices. The n...
Hermitian plus possibly unhermitian low rank matrices can be efficiently reduced into Hessenberg for...
Hermitian plus possibly non-Hermitian low rank matrices can be efficiently reduced into Hessenberg f...
The QR algorithm computes a Schur decomposition of a matrix. It is certainly one of the most importa...
AbstractThe QR-algorithm is a popular numerical method for the computation of eigenvalues of matrice...
Hermitian plus possibly non-Hermitian low rank matrices can be efficiently reduced into Hessenberg f...
The QR-algorithm is a popular numerical method for the computation of eigenvalues of matrices. All e...
International audienceThe Tall-Skinny QR (TSQR) algorithm is more communication efficient than the s...
Hermitian plus possibly non-Hermitian low rank matrices can be efficiently reduced into Hessenberg f...
The hierarchical (<i>H-</i>) matrix format allows storing a variety of dense matrices from certain a...
The efficient and accurate QR decomposition for matrices with hierarchical low-rank structures, such...
Abstract. In this paper, we consider a class of hierarchically rank structured matrices that include...
In previous papers hierarchical matrices were introduced which are data-sparse and allow an approxim...
Hierarchical matrix (H-matrix) techniques can be used to efficiently treat dense matrices. With an H...
The QR-algorithm is a renowned method for computing all eigenvalues of an arbitrary matrix. A prelim...
This thesis is on the numerical computation of eigenvalues of symmetric hierarchical matrices. The n...
Hermitian plus possibly unhermitian low rank matrices can be efficiently reduced into Hessenberg for...
Hermitian plus possibly non-Hermitian low rank matrices can be efficiently reduced into Hessenberg f...
The QR algorithm computes a Schur decomposition of a matrix. It is certainly one of the most importa...
AbstractThe QR-algorithm is a popular numerical method for the computation of eigenvalues of matrice...
Hermitian plus possibly non-Hermitian low rank matrices can be efficiently reduced into Hessenberg f...
The QR-algorithm is a popular numerical method for the computation of eigenvalues of matrices. All e...
International audienceThe Tall-Skinny QR (TSQR) algorithm is more communication efficient than the s...
Hermitian plus possibly non-Hermitian low rank matrices can be efficiently reduced into Hessenberg f...