Testing Different Conjugate Gradient Methods for Large-Scale Unconstrained Optimization
Abstract
In this paper we test different conjugate gradient (CG) methods for solving large-scale unconstrained optimization problems. The methods are divided in two groups: the first group includes five basic CG methods and the second five hybrid CG methods. A collection of medium-scale and large-scale test problems are drawn from a standard code of test problems, CUTE. The conjugate gradient methods are ranked according to the numerical results. Some remarks are given.
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Testing Different Conjugate Gradient Methods for Large-Scale Unconstrained Optimization. (2003). Journal of Computational Mathematics, 21(3), 311-320. https://www.global-sci.com/index.php/JCM/article/view/11557