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Incorporating minimum Frobenius norm models in direct search

机译:在直接搜索中纳入最小Frobenius范数模型

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摘要

The goal of this paper is to show that the use of minimum Frobenius norm quadratic models can improve the performance of direct-search methods. The approach taken here is to maintain the structure of directional direct-search methods, organized around a search and a poll step, and to use the set of previously evaluated points generated during a direct-search run to build the models. The minimization of the models within a trust region provides an enhanced search step. Our numerical results show that such a procedure can lead to a significant improvement of direct search for smooth, piecewise smooth, and noisy problems.
机译:本文的目的是表明使用最小Frobenius范数二次模型可以提高直接搜索方法的性能。此处采用的方法是维护定向直接搜索方法的结构,该结构围绕搜索和轮询步骤进行组织,并使用在直接搜索运行期间生成的一组先前评估的点来构建模型。信任区域内模型的最小化提供了增强的搜索步骤。我们的数值结果表明,这样的程序可以大大改善直接搜索平滑,分段平滑和嘈杂问题的能力。

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