The generalized singular value decomposition (GSVD) of a pair of matrices expresses each matrix as a product of an orthogonal, a diagonal, and a nonsingular matrix. The nonsingular matrix, which we denote by XT, is the same in both products. Available software for computing the GSVD scales the diagonal matrices and XT so that the squares of corresponding diagonal entries sum to one. This paper proposes a scaling that seeks to minimize the condition number of XT. The rescaled GSVD gives rise to new truncated GSVD methods, one of which is well suited for the solution of linear discrete ill-posed problems. Numerical examples show this new truncated GSVD method to be competitive with the standard truncated GSVD method as well as with Tikhonov regularization with regard to the quality of the computed approximate solution. © 2014 Springer Science+Business Media New York.
Rescaling the GSVD with application to ill-posed problems / L., Dykes; Noschese, Silvia; L., Reichel. - In: NUMERICAL ALGORITHMS. - ISSN 1017-1398. - STAMPA. - 68:(2014), pp. 531-545. [10.1007/s11075-014-9859-3]
Rescaling the GSVD with application to ill-posed problems
NOSCHESE, Silvia;
2014
Abstract
The generalized singular value decomposition (GSVD) of a pair of matrices expresses each matrix as a product of an orthogonal, a diagonal, and a nonsingular matrix. The nonsingular matrix, which we denote by XT, is the same in both products. Available software for computing the GSVD scales the diagonal matrices and XT so that the squares of corresponding diagonal entries sum to one. This paper proposes a scaling that seeks to minimize the condition number of XT. The rescaled GSVD gives rise to new truncated GSVD methods, one of which is well suited for the solution of linear discrete ill-posed problems. Numerical examples show this new truncated GSVD method to be competitive with the standard truncated GSVD method as well as with Tikhonov regularization with regard to the quality of the computed approximate solution. © 2014 Springer Science+Business Media New York.I documenti in IRIS sono protetti da copyright e tutti i diritti sono riservati, salvo diversa indicazione.