Low-rank structured matrices have attracted much attention in the last decades, since they arise in many applications and all share the fundamental property that can be represented by O(n) parameters, where n x n is the size of the matrix. This property has allowed the development of fast algorithms for solving numerically many problems involving low-rank structured matrices by performing operations on the parameters describing the matrices, instead of directly on the matrix entries. Among these problems the solution of linear systems of equations and the computation of the eigenvalues are probably the most basic and relevant ones. Therefore, it is important to measure, via structured computable condition numbers, the relative sensitivity ...
AbstractThis paper presents explicit formulas and algorithms to compute the eigenvalues and eigenvec...
International audienceThe class of quasiseparable matrices is defined by the property that any subma...
Abstract. In the second part of this paper we study condition numbers with respect to com-ponentwise...
Low-rank structured matrices have attracted much attention in the last decades, since they arise in ...
Low-rank structured matrices have attracted much attention in the last decades, since they arise in ...
The development of fast algorithms for performing computations with n x n low-rank structured matric...
Abstract(#br)In this paper, when A and B are {1;1}-quasiseparable matrices, we consider the structur...
Abstract(#br)In this paper, we consider the structured perturbation analysis for multiple right-hand...
The interplay between structured matrices and corresponding systems of polynomials is a classical to...
This PhD thesis is an important development in the theories, methods, and applications of eigenvalue...
This paper investigates the effect of structure-preserving perturbations on the eigenvalues of line...
This paper investigates the effect of structure-preserving perturbations on the eigenvalues of linea...
AbstractThis work is concerned with eigenvalue problems for structured matrix polynomials, including...
Invariant subspaces of structured matrices are sometimes better conditioned with respect to structur...
AbstractThis paper presents explicit formulas and algorithms to compute the eigenvalues and eigenvec...
International audienceThe class of quasiseparable matrices is defined by the property that any subma...
Abstract. In the second part of this paper we study condition numbers with respect to com-ponentwise...
Low-rank structured matrices have attracted much attention in the last decades, since they arise in ...
Low-rank structured matrices have attracted much attention in the last decades, since they arise in ...
The development of fast algorithms for performing computations with n x n low-rank structured matric...
Abstract(#br)In this paper, when A and B are {1;1}-quasiseparable matrices, we consider the structur...
Abstract(#br)In this paper, we consider the structured perturbation analysis for multiple right-hand...
The interplay between structured matrices and corresponding systems of polynomials is a classical to...
This PhD thesis is an important development in the theories, methods, and applications of eigenvalue...
This paper investigates the effect of structure-preserving perturbations on the eigenvalues of line...
This paper investigates the effect of structure-preserving perturbations on the eigenvalues of linea...
AbstractThis work is concerned with eigenvalue problems for structured matrix polynomials, including...
Invariant subspaces of structured matrices are sometimes better conditioned with respect to structur...
AbstractThis paper presents explicit formulas and algorithms to compute the eigenvalues and eigenvec...
International audienceThe class of quasiseparable matrices is defined by the property that any subma...
Abstract. In the second part of this paper we study condition numbers with respect to com-ponentwise...