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A family of hybrid conjugate gradient methods for unconstrained optimization

机译:无约束优化的混合共轭梯度方法系列

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摘要

Conjugate gradient methods are an important class of methods for unconstrained optimization, especially for large-scale problems. Recently, they have been much studied. This paper proposes a three-parameter family of hybrid conjugate gradient methods. Two important features of the family are that (i) it can avoid the propensity of small steps, namely, if a small step is generated away from the solution point, the next search direction will be close to the negative gradient direction; and (ii) its descent property and global convergence are likely to be achieved provided that the line search satisfies the Wolfe conditions. Some numerical results with the family are also presented. [References: 24]
机译:共轭梯度法是无约束优化的一类重要方法,特别是对于大规模问题。最近,对它们进行了很多研究。本文提出了一种三参数混合共轭梯度法。该族的两个重要特征是:(i)可以避免小步长的倾向,即,如果在求解点之外产生一个小步长,则下一个搜索方向将接近负梯度方向; (ii)如果线搜索满足Wolfe条件,则有可能实现其下降特性和全局收敛。还给出了该族的一些数值结果。 [参考:24]

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