NUMERICAL METHODS FOR LARGE EIGENVALUE PROBLEMS
terns in dynamical systems. In fact the writing of this book was motivated mostly by the second class of problems. Several books dealing with numerical methods for solving eigenvalue prob-lems involving symmetric (or Hermitian) matrices have been written and there are a few software packages both public and commercial available. The book
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