We shall present a new iterative method for finding some
extreme eigenvalues of the symmetric definite generalized eigenvalue
problem $Ax=\lambda B x$. The method takes a form of inner-outer
iterations and is based on the Krylov subspace projection methods but
differs from the known methods in that inversion (i.e. solution of
shift-and-invert equations) is neither explicitly nor implicitly
involved. We shall also present a convergence analysis that
leads to some preconditioning transformations to accelerate the
convergence. We shall finally describe a program called EIGIFP that
has recently been developed to implement this new method.
This is a joint work with Gene H. Golub of Stanford University.