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An Approximate Proximal Bundle Method to Minimize a Class of Maximum Eigenvalue Functions

机译:最小化一类最大特征值函数的近似近束方法

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We present an approximate nonsmooth algorithm to solve a minimization problem, in which the objective function is the sum of a maximum eigenvalue function of matrices and a convex function. The essential idea to solve the optimization problem in this paper is similar to the thought of proximal bundle method, but the difference is that we choose approximate subgradient and function value to construct approximate cutting-plane model to solve the above mentioned problem. An important advantage of the approximate cutting-plane model for objective function is that it is more stable than cutting-plane model. In addition, the approximate proximal bundle method algorithm can be given. Furthermore, the sequences generated by the algorithm converge to the optimal solution of the original problem.
机译:我们提出一种近似非光滑算法来解决最小化问题,其中目标函数是矩阵的最大特征值函数与凸函数的和。本文中解决优化问题的基本思想与近端束法的思想相似,但不同之处在于我们选择近似次梯度和函数值来构建近似切平面模型来解决上述问题。用于目标函数的近似切面模型的一个重要优点是,它比切面模型更稳定。另外,可以给出近似的近端束法算法。此外,算法生成的序列收敛到原始问题的最优解。

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