The reduction of a large-scale symmetric linear discrete ill-posed problem with multiple right-hand sides to a smaller problem with a symmetric block tridiagonal matrix can easily be carried out by the application of a small number of steps of the symmetric block Lanczos method. We show that the subdiagonal blocks of the reduced problem converge to zero fairly rapidly with increasing block number. This quick convergence indicates that there is little advantage in expressing the solutions of discrete ill-posed problems in terms of eigenvectors of the coefficient matrix when compared with using a basis of block Lanczos vectors, which are simpler and cheaper to compute. Similarly, for nonsymmetric linear discrete ill-posed problems with multip...
AbstractThe Lanczos tridiagonalization orthogonally transforms a real symmetric matrix A to symmetri...
In this paper, we investigate the block Lanczos algorithm for solving large sparse symmetric linear ...
Among the iterative methods for solving large linear systems with a sparse (or, possibly, structured...
The reduction of a large-scale symmetric linear discrete ill-posed problem with multiple right-hand ...
The symmetric Lanczos method is commonly applied to reduce large-scale symmetric linear discrete ill...
Linear systems of equations with a matrix whose singular values decay to zero with increasing index ...
Many applications in science and engineering require the solution of large linear discrete ill-posed...
The Lanczos algorithm has proven itself to be a valuable matrix eigensolver for problems with large ...
AbstractWe compare the block Lanczos and the Davidson methods for computing a basis of a singular su...
Randomized methods can be competitive for the solution of problems with a large matrix of low rank. ...
Dedicated to Richard Varga on the occasion of his 70th birthday The Lanczos method can be generalize...
: We compare the block-Lanczos and the Davidson methods for computing a basis of a singular subspace...
The iterative solution of large linear discrete ill-posed problems with an error contaminated data v...
Linear discrete ill-posed problems of small to medium size are commonly solved by first computing th...
We describe a novel method for reducing a pair of large matrices {A;B} to a pair of small matrices {...
AbstractThe Lanczos tridiagonalization orthogonally transforms a real symmetric matrix A to symmetri...
In this paper, we investigate the block Lanczos algorithm for solving large sparse symmetric linear ...
Among the iterative methods for solving large linear systems with a sparse (or, possibly, structured...
The reduction of a large-scale symmetric linear discrete ill-posed problem with multiple right-hand ...
The symmetric Lanczos method is commonly applied to reduce large-scale symmetric linear discrete ill...
Linear systems of equations with a matrix whose singular values decay to zero with increasing index ...
Many applications in science and engineering require the solution of large linear discrete ill-posed...
The Lanczos algorithm has proven itself to be a valuable matrix eigensolver for problems with large ...
AbstractWe compare the block Lanczos and the Davidson methods for computing a basis of a singular su...
Randomized methods can be competitive for the solution of problems with a large matrix of low rank. ...
Dedicated to Richard Varga on the occasion of his 70th birthday The Lanczos method can be generalize...
: We compare the block-Lanczos and the Davidson methods for computing a basis of a singular subspace...
The iterative solution of large linear discrete ill-posed problems with an error contaminated data v...
Linear discrete ill-posed problems of small to medium size are commonly solved by first computing th...
We describe a novel method for reducing a pair of large matrices {A;B} to a pair of small matrices {...
AbstractThe Lanczos tridiagonalization orthogonally transforms a real symmetric matrix A to symmetri...
In this paper, we investigate the block Lanczos algorithm for solving large sparse symmetric linear ...
Among the iterative methods for solving large linear systems with a sparse (or, possibly, structured...