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

机译:对称矩阵特征值的强半光滑性及其在逆特征值问题中的应用

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摘要

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. [References: 27]
机译:众所周知,实对称矩阵的特征值并非到处都是可微的。 Ky Fan的经典结果指出,对称矩阵的每个特征值都是两个凸函数的差,这意味着特征值是半光滑函数。基于作者的最新结果,本文进一步证明了对称矩阵的特征值在任何地方都是强半光滑的。作为一个应用,证明了该结果如何可用于分析牛顿方法的二次收敛性,以解决逆特征值问题(IEP)和具有多个特征值的广义IEP。 [参考:27]

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