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Multi-step nonlinear conjugate gradient methods for unconstrained minimization

机译:无约束最小化的多步非线性共轭梯度法

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Conjugate gradient methods are appealing for large scale nonlinear optimization problems, because they avoid the storage of matrices. Recently, seeking fast convergence of these methods, Dai and Liao (Appl. Math. Optim. 43:87–101, 2001) proposed a conjugate gradient method based on the secant condition of quasi-Newton methods, and later Yabe and Takano (Comput. Optim. Appl. 28:203–225, 2004) proposed another conjugate gradient method based on the modified secant condition. In this paper, we make use of a multi-step secant condition given by Ford and Moghrabi (Optim. Methods Softw. 2:357–370, 1993; J. Comput. Appl. Math. 50:305–323, 1994) and propose two new conjugate gradient methods based on this condition. The methods are shown to be globally convergent under certain assumptions. Numerical results are reported.
机译:共轭梯度法对大规模非线性优化问题很有吸引力,因为它们避免了矩阵的存储。最近,为寻求这些方法的快速收敛,Dai和Liao(Appl。Math。Optim。43:87-101,2001)提出了一种基于拟牛顿法割线条件的共轭梯度法,后来又提出了Yabe和Takano(Comput (Optim。Appl。28:203–225,2004)提出了另一种基于修正割线条件的共轭梯度法。在本文中,我们利用了福特和莫格拉比(Ford and Moghrabi)给出的多步割线条件(Optim。Methods Softw。2:357-370,1993; J. Comput。Appl。Math。50:305-323,1994)和为此提出了两种新的共轭梯度法。在某些假设下,这些方法显示为全局收敛的。报告了数值结果。

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