一类新的无约束优化混合共轭梯度方法

O. J. Adeleke, A. Ezugwu, I. Osinuga
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引用次数: 1

摘要

共轭梯度法是求解大规模无约束优化问题的一种非常有效的迭代技术。受最近对该方法的一些变体和混合方法构造的修改的启发,本研究提出了四种全局收敛且计算高效的混合方法。构造混合方法所采用的方法需要投影十个最近修改的共轭梯度方法。每种混合方法都满足独立于任何线性搜索技术的下降特性,并且在强Wolfe线性搜索的影响下全局收敛。从这些方法的数值实现和性能评测中获得的结果表明,这些方法与众所周知的传统方法具有很强的竞争力。
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A New Family of Hybrid Conjugate Gradient Methods for Unconstrained Optimization
The conjugate gradient method is a very efficient iterative technique for solving large-scale unconstrained optimization problems. Motivated by recent modifications of some variants of the method and construction of hybrid methods, this study proposed four hybrid methods that are globally convergent as well as computationally efficient. The approach adopted for constructing the hybrid methods entails projecting ten recently modified conjugate gradient methods. Each of the hybrid methods is shown to satisfy the descent property independent of any line search technique and globally convergent under the influence of strong Wolfe line search. Results obtained from numerical implementation of these methods and performance profiling show that the methods are very competitive with well-known traditional methods.
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