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首页> 外文期刊>Optimization: A Journal of Mathematical Programming and Operations Research >Globally convergent algorithms for solving unconstrained optimization problems
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Globally convergent algorithms for solving unconstrained optimization problems

机译:解决无约束优化问题的全局收敛算法

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摘要

New algorithms for solving unconstrained optimization problems are presented based on the idea of combining two types of descent directions: the direction of anti-gradient and either the Newton or quasi-Newton directions. The use of latter directions allows one to improve the convergence rate. Global and superlinear convergence properties of these algorithms are established. Numerical experiments using some unconstrained test problems are reported. Also, the proposed algorithms are compared with some existing similar methods using results of experiments. This comparison demonstrates the efficiency of the proposed combined methods.
机译:基于组合两种下降方向的思想,提出了用于解决无约束优化问题的新算法:反梯度方向和牛顿或准牛顿方向。后一种方向的使用允许一个方向提高收敛速度。建立了这些算法的全局和超线性收敛性质。报告了使用一些不受限制的测试问题的数值实验。此外,使用实验结果将提出的算法与一些现有的类似方法进行了比较。该比较证明了所提出的组合方法的效率。

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