We introduce a new family of strong linearizations of matrix polynomialswhich we call block Kronecker pencilsand perform a backward stability analysis of complete polynomial eigenproblems. These problems are solved by applying any backward stable algorithm to a block Kronecker pencil, such as the staircase algorithm for singular pencils or the QZ algorithm for regular pencils. This stability analysis allows us to identify those block Kronecker pencils that yield a computed complete eigenstructure which is exactly that of a slightly perturbed matrix polynomial. The global backward error analysis in this work presents for the first time the following key properties: it is a rigorous analysis valid for finite perturbations (i.e., it is not a f...
It is commonplace in many application domains to utilize polynomial eigenvalue problems to model the...
It is commonplace in many application domains to utilize polynomial eigenvalue problems to model the...
We perform a backward error analysis of polynomial eigenvalue problems solved via linearization. Thr...
We introduce a new family of strong linearizations of matrix polynomialswhich we call block Kronecke...
We introduce a new family of strong linearizations of matrix polynomials---which we call "block Kron...
We introduce a new family of strong linearizations of matrix polynomials---which we call "block Kron...
We start by introducing a new class of structured matrix polynomials, namely, the class of M-A-struc...
Abstract. We start by introducing a new class of structured matrix polynomials, namely, the class of...
We start by introducing a new class of structured matrix polynomials, namely, the class of M-A-struc...
Abstract. We start by introducing a new class of structured matrix polynomials, namely, the class of...
In this paper we study the backward stability of running a backward stable eigenstructure solver on ...
In this paper we study the backward stability of running a backward stable eigenstructure solver on ...
The standard way of solving the polynomial eigenvalue problem associated with a matrix polynomial is...
The standard way of solving the polynomial eigenvalue problem associated with a matrix polynomial is...
One of the most frequently used techniques to solve polynomial eigenvalue problems is linearization,...
It is commonplace in many application domains to utilize polynomial eigenvalue problems to model the...
It is commonplace in many application domains to utilize polynomial eigenvalue problems to model the...
We perform a backward error analysis of polynomial eigenvalue problems solved via linearization. Thr...
We introduce a new family of strong linearizations of matrix polynomialswhich we call block Kronecke...
We introduce a new family of strong linearizations of matrix polynomials---which we call "block Kron...
We introduce a new family of strong linearizations of matrix polynomials---which we call "block Kron...
We start by introducing a new class of structured matrix polynomials, namely, the class of M-A-struc...
Abstract. We start by introducing a new class of structured matrix polynomials, namely, the class of...
We start by introducing a new class of structured matrix polynomials, namely, the class of M-A-struc...
Abstract. We start by introducing a new class of structured matrix polynomials, namely, the class of...
In this paper we study the backward stability of running a backward stable eigenstructure solver on ...
In this paper we study the backward stability of running a backward stable eigenstructure solver on ...
The standard way of solving the polynomial eigenvalue problem associated with a matrix polynomial is...
The standard way of solving the polynomial eigenvalue problem associated with a matrix polynomial is...
One of the most frequently used techniques to solve polynomial eigenvalue problems is linearization,...
It is commonplace in many application domains to utilize polynomial eigenvalue problems to model the...
It is commonplace in many application domains to utilize polynomial eigenvalue problems to model the...
We perform a backward error analysis of polynomial eigenvalue problems solved via linearization. Thr...