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Globally convergent limited memory bundle method for large-scale nonsmooth optimization

机译:全局收敛的有限内存束方法用于大规模非光滑优化

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摘要

Many practical optimization problems involve nonsmooth (that is, not necessarily differentiable) functions of thousands of variables. In the paper [Haarala, Miettinen, Mäkelä, Optimization Methods and Software, 19, (2004), pp. 673–692] we have described an efficient method for large-scale nonsmooth optimization. In this paper, we introduce a new variant of this method and prove its global convergence for locally Lipschitz continuous objective functions, which are not necessarily differentiable or convex. In addition, we give some encouraging results from numerical experiments.
机译:许多实际的优化问题涉及成千上万个变量的不平滑(即不一定可微)函数。在论文[Haarala,Miettinen,Mäkelä,优化方法和软件,19,(2004),pp。673–692]中,我们描述了一种有效的大规模非光滑优化方法。在本文中,我们介绍了此方法的新变体,并证明了其对于局部Lipschitz连续目标函数(不一定是可微的或凸的)的全局收敛性。此外,我们从数值实验中得出了一些令人鼓舞的结果。

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