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Trust-Region Methods Without Using Derivatives: Worst Case Complexity and the NonSmooth Case

机译:不使用衍生物的信赖域方法:最坏情况复杂度和非平滑情况

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摘要

Trust-region methods are a broad class of methods for continuous optimization that found application in a variety of problems and contexts. In particular, they have been studied and applied for problems without using derivatives. The analysis of trust-region derivative-free methods has focused on global convergence, and they have been proven to generate a sequence of iterates converging to stationarity independently of the starting point. Most of such an analysis is carried out in the smooth case, and, moreover, little is known about the complexity or global rate of these methods. In this paper, we start by analyzing the worst case complexity of general trust-region derivative-free methods for smooth functions. For the nonsmooth case, we propose a smoothing approach, for which we prove global convergence and bound the worst case complexity effort. For the special case of nonsmooth functions that result from the composition of smooth and nonsmooth/convex components, we show how to improve the existing results of the literature and make them applicable to the general methodology.
机译:信任区域方法是一类广泛的连续优化方法,可在各种问题和环境中找到应用。特别地,它们已经被研究并且在不使用导数的情况下用于问题。信任区域无导数方法的分析集中于全局收敛,并且已证明它们可以独立于起点而生成收敛到平稳性的一系列迭代。大多数此类分析都是在平稳的情况下进行的,而且,对这些方法的复杂性或总体适用率知之甚少。在本文中,我们从分析平滑函数的一般信任区域无导数方法的最坏情况复杂度开始。对于非平滑情况,我们提出了一种平滑方法,该方法证明了全局收敛性,并且限制了最坏情况下的复杂性工作。对于由平滑分量和非平滑/凸分量组成而导致的非平滑函数的特殊情况,我们展示了如何改进文献的现有结果并使它们适用于一般方法。

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