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Smooth Convex Approximation to the Maximum Eigenvalue Function
Authors:Xin Chen  Houduo Qi  Liqun Qi  Kok-Lay Teo
Institution:(1) Department of Mechanical and Industrial Engineering, University of Illinois at Urbana-Champaign, 224 Mechanical Engineering Building, mc-244, 1206 West Green Street, Urbana, IL 61801, USA;(2) School of Mathematics, University of Southampton, Highfield, Southampton, S017 1BJ, Great Britain;(3) Department of Applied Mathematics, The Hong Kong Polytechnic University, Hung Hom, Kowloon, Hong Kong
Abstract:In this paper, we consider smooth convex approximations to the maximum eigenvalue function. To make it applicable to a wide class of applications, the study is conducted on the composite function of the maximum eigenvalue function and a linear operator mapping Ropfm to 
$${\mathcal{S}}_n $$
, the space of n-by-n symmetric matrices. The composite function in turn is the natural objective function of minimizing the maximum eigenvalue function over an affine space in 
$${\mathcal{S}}_n $$
. This leads to a sequence of smooth convex minimization problems governed by a smoothing parameter. As the parameter goes to zero, the original problem is recovered. We then develop a computable Hessian formula of the smooth convex functions, matrix representation of the Hessian, and study the regularity conditions which guarantee the nonsingularity of the Hessian matrices. The study on the well-posedness of the smooth convex function leads to a regularization method which is globally convergent.
Keywords:Matrix representation  spectral function  Symmetric function  Tikhonov regularization
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