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A Nonlinear Conjugate Gradient Method With A Strong Global Convergence Property

机译:具有强全局收敛性的非线性共轭梯度法

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摘要

Conjugate gradient methods are widely used for unconstrained optimization, especially large scale problems. The strong Wolfe conditions are usually used in the analyses and implementations of conjugate gradient methods. This paper presents a new version of the conjugate gradient method, which converges globally, provided the line search satisfies the standard Wolfe conditions. The conditions on the objective function are also weak, being similar to those required by the Zoutendijk condition.
机译:共轭梯度法广泛用于无约束优化,尤其是大规模问题。强Wolfe条件通常用于共轭梯度法的分析和实现中。本文提出了一种新版本的共轭梯度法,只要线搜索满足标准Wolfe条件,它便可以全局收敛。目标函数的条件也很弱,类似于Zoutendijk条件所要求的条件。

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