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A reduced-space line-search method for unconstrained optimization via random descent directions

机译:通过随机下降方向无约束优化的降低空间线路搜索方法

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摘要

In this paper, we propose an iterative method based on reduced-space approximations for unconstrained optimization problems. The method works as follows: among iterations, samples are taken about the current solution by using, for instance, a Normal distribution; for all samples, gradients are computed (approximated) in order to build reduced-spaces onto which descent directions of cost functions are estimated. By using such directions, intermediate solutions are updated. The overall process is repeated until some stopping criterion is satisfied. The convergence of the proposed method is theoretically proven by using classic assumptions in the line search context. Experimental tests are performed by using well-known benchmark optimization problems and a non-linear data assimilation problem. The results reveal that, as the number of sample points increase, gradient norms go faster towards zero and even more, in the data assimilation context, error norms are decreased by several order of magnitudes with regard to prior errors when the assimilation step is performed by means of the proposed formulation. (c) 2018 Elsevier Inc. All rights reserved.
机译:在本文中,我们提出了一种基于对无约束优化问题的降低空间近似的迭代方法。该方法如下工作:在迭代中,通过使用例如正常分布,对当前解决方案进行了关于当前解决方案的样本;对于所有样本,计算(近似)梯度以构建估计成本函数的下降方向上的降低空间。通过使用此类方向,更新中间解决方案。重复整个过程,直到满足一些停止标准。通过在线搜索上下文中使用经典假设,理论上证明了所提出的方法的收敛。通过使用众所周知的基准优化问题和非线性数据同化问题来执行实验测试。结果表明,随着样本点的数量增加,梯度规范朝向零甚至更多,在数据同化上下文中,当通过提出的制剂的手段。 (c)2018年Elsevier Inc.保留所有权利。

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