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The nonsymmetric eigenvalue problem is to find the eigenvalues, ,
and corresponding eigenvectors, , such that
A real matrix may have complex eigenvalues, occurring as complex conjugate
pairs. More precisely, the vector is called a right
eigenvector of , and a vector satisfying
is called a left eigenvector of .
This problem can be solved
via the Schur factorization of ,
defined in the real case as
where is an orthogonal matrix and is an upper quasi-triangular matrix
with and diagonal blocks,
the blocks
corresponding to complex conjugate pairs
of eigenvalues of . In the
complex case the Schur factorization is
where is unitary and is a complex upper triangular matrix.
The columns of are called the Schur vectors.
For each
, the first columns of form an orthonormal
basis for the invariant subspace corresponding to the
first eigenvalues on the diagonal of . Because this
basis is orthonormal, it is preferable in many
applications to compute Schur vectors rather than
eigenvectors. It is possible to order the Schur
factorization so that any desired set of eigenvalues
occupy the leading positions on the diagonal of .
Two pairs of drivers are provided, one pair focusing on the Schur
factorization, and the other pair on the eigenvalues and eigenvectors
as shown in Table 2.5:
- LA_GEES: a simple driver that computes all or
part of the Schur factorization of , with optional ordering of the
eigenvalues;
- LA_GEESX: an expert driver that can additionally
compute condition numbers for the average of a selected subset of the
eigenvalues, and for the corresponding right invariant subspace;
- LA_GEEV: a simple driver that computes all the
eigenvalues of , and (optionally) the right or left eigenvectors (or both);
- LA_GEEVX: an expert driver that can additionally
balance the matrix to improve the conditioning of the eigenvalues and
eigenvectors, and compute condition numbers for the eigenvalues or right
eigenvectors (or both).
Next: Singular Value Decomposition (SVD)
Up: Standard Eigenvalue and Singular
Previous: Symmetric Eigenproblems (SEP)
  Contents
  Index
Susan Blackford
2001-08-19