Abstract. The standard way of solving the polynomial eigenvalue problem of degree m in n×n matrices is to “linearize ” to a pencil in mn×mn matrices and solve the generalized eigenvalue prob-lem. For a given polynomial, P, infinitely many linearizations exist and they can have widely varying eigenvalue condition numbers. We investigate the conditioning of linearizations from a vector space DL(P) of pencils recently identified and studied by Mackey, Mackey, Mehl, and Mehrmann. We look for the best conditioned linearization and compare the conditioning with that of the original polynomial. Two particular pencils are shown always to be almost optimal over linearizations in DL(P) for eigenvalues of modulus greater than or less than 1, respectiv...
Abstract. The classical approach to investigating polynomial eigenvalue problems is linearization, w...
AbstractThis work is concerned with eigenvalue problems for structured matrix polynomials, including...
Matrix polynomial eigenproblems arise in many application areas, both directly and as approximations...
Abstract. The standard way of solving the polynomial eigenvalue problem of degree m in n×n matrices ...
Abstract. The standard way of solving the polynomial eigenvalue problem of degree m in n ×n matrices...
The standard way of solving the polynomial eigenvalue problem of degree $m$ in $n\times n$ matrices ...
The standard way of solving the polynomial eigenvalue problem of degree $m$ in $n\times n$ matrices ...
The classical approach to investigating polynomial eigenvalue problems is linearization, where the p...
The classical approach to investigating polynomial eigenvalue problems is linearization, where the p...
The classical approach to investigating polynomial eigenvalue problems is linearization, where the ...
The classical approach to investigating polynomial eigenvalue problems is linearization, where the ...
Abstract. The classical approach to investigating polynomial eigenvalue problems is lineariza-tion, ...
Abstract. The classical approach to investigating polynomial eigenvalue problems is lineariza-tion, ...
The classical approach to investigating polynomial eigenvalue problems is linearization, where the u...
The classical approach to investigating polynomial eigenvalue problems is linearization, where the u...
Abstract. The classical approach to investigating polynomial eigenvalue problems is linearization, w...
AbstractThis work is concerned with eigenvalue problems for structured matrix polynomials, including...
Matrix polynomial eigenproblems arise in many application areas, both directly and as approximations...
Abstract. The standard way of solving the polynomial eigenvalue problem of degree m in n×n matrices ...
Abstract. The standard way of solving the polynomial eigenvalue problem of degree m in n ×n matrices...
The standard way of solving the polynomial eigenvalue problem of degree $m$ in $n\times n$ matrices ...
The standard way of solving the polynomial eigenvalue problem of degree $m$ in $n\times n$ matrices ...
The classical approach to investigating polynomial eigenvalue problems is linearization, where the p...
The classical approach to investigating polynomial eigenvalue problems is linearization, where the p...
The classical approach to investigating polynomial eigenvalue problems is linearization, where the ...
The classical approach to investigating polynomial eigenvalue problems is linearization, where the ...
Abstract. The classical approach to investigating polynomial eigenvalue problems is lineariza-tion, ...
Abstract. The classical approach to investigating polynomial eigenvalue problems is lineariza-tion, ...
The classical approach to investigating polynomial eigenvalue problems is linearization, where the u...
The classical approach to investigating polynomial eigenvalue problems is linearization, where the u...
Abstract. The classical approach to investigating polynomial eigenvalue problems is linearization, w...
AbstractThis work is concerned with eigenvalue problems for structured matrix polynomials, including...
Matrix polynomial eigenproblems arise in many application areas, both directly and as approximations...