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Smooth Convex Approximation to the Maximum Eigenvalue Function

机译:最大特征值函数的平滑凸近似

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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 R~m to 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 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.
机译:在本文中,我们考虑最大特征值函数的光滑凸近似。为了使其适用于广泛的应用,对最大特征值函数和将R〜m映射到S_n(n×n对称矩阵的空间)的线性算子的复合函数进行了研究。反过来,复合函数是在S_n的仿射空间上最小化最大特征值函数的自然目标函数。这导致一系列由平滑参数控制的平滑凸最小化问题。随着参数变为零,原始问题得以恢复。然后,我们开发了光滑凸函数的可计算Hessian公式,Hessian的矩阵表示形式,并研究了保证Hessian矩阵非奇异性的正则条件。对光滑凸函数的适定性的研究导致了一种全局收敛的正则化方法。

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