Reliable estimates for the condition number of a large (sparse) matrix
are important in many applications.
To get an upper bound for the condition number
, a lower bound
for the smallest singular value is needed. Krylov subspaces are usually
unsuitable for finding a good approximation to the smallest singular
value.
Therefore, we study extended Krylov subspaces which turn out to be ideal
for the simultaneous approximation of both the smallest and largest
singular value of a matrix. First, we develop a new extended Lanczos
bidiagonalization method. With this method we obtain a guaranteed lower
bound for the condition number. Moreover, the method also yields a
probabilistic upper bound for
. This probabilistic upper bound
holds with a user-chosen probability.