4.6 Article

Strong semismoothness of eigenvalues of symmetric matrices and its application to inverse eigenvalue problems

Journal

SIAM JOURNAL ON NUMERICAL ANALYSIS
Volume 40, Issue 6, Pages 2352-2367

Publisher

SIAM PUBLICATIONS
DOI: 10.1137/S0036142901393814

Keywords

symmetric matrices; eigenvalues; strong semismoothness; Newton's method; inverse eigenvalue problems; quadratic convergence

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It is well known that the eigenvalues of a real symmetric matrix are not everywhere differentiable. A classical result of Ky Fan states that each eigenvalue of a symmetric matrix is the difference of two convex functions, which implies that the eigenvalues are semismooth functions. Based on a recent result of the authors, it is further proved in this paper that the eigenvalues of a symmetric matrix are strongly semismooth everywhere. As an application, it is demonstrated how this result can be used to analyze the quadratic convergence of Newton's method for solving inverse eigenvalue problems (IEPs) and generalized IEPs with multiple eigenvalues.

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