黎曼流形的两种高效非线性共轭梯度方法

IF 2.6 3区 数学
Nasiru Salihu, Poom Kumam, Sani Salisu
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引用次数: 0

摘要

在本文中,我们提出了一种高效的共轭梯度(CG)参数,并将其推广到黎曼流形,从而解决了与 RMIL+ 共轭梯度参数相关的一些计算难题。该参数结合了两种经典共轭梯度方法的结构,确保了共轭梯度方法在黎曼优化中的良好收敛特性。该扩展利用回缩和矢量传输的概念,通过强 Wolfe 线搜索条件为该方法建立了充分的下降特性。此外,该方案还利用缩放版的 Ring-Wirth 非膨胀条件实现了全局收敛。最后,我们通过数值实验验证了该方法的有效性。我们考虑了无约束欧氏优化测试问题和黎曼优化问题。结果表明,在欧氏优化和黎曼优化中,线搜索的选择对所提方法的性能影响很大。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Two efficient nonlinear conjugate gradient methods for Riemannian manifolds

Two efficient nonlinear conjugate gradient methods for Riemannian manifolds

In this paper, we address some of the computational challenges associated with the RMIL+ conjugate gradient parameter by proposing an efficient conjugate gradient (CG) parameter along with its generalization to the Riemannian manifold. This parameter ensures the good convergence properties of the CG method in Riemannian optimization and it is formed by combining the structures of two classical CG methods. The extension utilizes the concepts of retraction and vector transport to establish sufficient descent property for the method via strong Wolfe line search conditions. Additionally, the scheme achieves global convergence using the scaled version of the Ring-Wirth nonexpansive condition. Finally, numerical experiments are conducted to validate the scheme’s effectiveness. We consider both unconstrained Euclidean optimization test problems and Riemannian optimization problems. The results reveal that the performance of the proposed method is significantly influenced by the choice of line search in both Euclidean and Riemannian optimizations.

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来源期刊
自引率
11.50%
发文量
352
期刊介绍: Computational & Applied Mathematics began to be published in 1981. This journal was conceived as the main scientific publication of SBMAC (Brazilian Society of Computational and Applied Mathematics). The objective of the journal is the publication of original research in Applied and Computational Mathematics, with interfaces in Physics, Engineering, Chemistry, Biology, Operations Research, Statistics, Social Sciences and Economy. The journal has the usual quality standards of scientific international journals and we aim high level of contributions in terms of originality, depth and relevance.
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