A new descent algorithm with curve search rule for unconstrained minimization

Jingyong Tang, Li Dong
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引用次数: 2

Abstract

In the paper we present a new descent algorithm with curve search rule for unconstrained minimization problems. At each iteration, the next iterative point is determined by means of a curve search rule. It is particular that the search direction and the step size is determined simultaneously at each iteration of the new algorithm. Similarly to conjugate gradient methods, the algorithm avoids the computation and storage of some matrices associated with the Hessian of objective functions. It is suitable to solve large scale minimization problems. Numerical experiments show that our algorithm is effective in practical computation.
基于曲线搜索规则的无约束最小化下降算法
针对无约束最小化问题,提出了一种新的带曲线搜索规则的下降算法。在每次迭代中,通过曲线搜索规则确定下一个迭代点。特别的是,新算法在每次迭代时同时确定搜索方向和步长。与共轭梯度法相似,该算法避免了与目标函数的Hessian相关的一些矩阵的计算和存储。它适用于解决大规模的最小化问题。数值实验表明,该算法在实际计算中是有效的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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