基于共轭梯度法的无记忆自缩放 BFGS,利用多步秒条件实现无约束最小化

IF 0.6 4区 数学 Q4 MATHEMATICS, APPLIED
Yongjin Kim, Yunchol Jong, Yong Kim
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引用次数: 0

摘要

共轭梯度法由于不需要存储矩阵而被广泛应用于求解大规模无约束优化问题。W. Hager, H. Zhang(2005)和Y. Dai, C. Kou(2013)分别在自标度无记忆Broyden-Fletcher-Goldfarb-Shanno (SSML-BFGS)方法的基础上提出了新的共轭梯度算法CG-DESCENT和CGOPT。结果表明,这两种共轭梯度方法比SSML-BFGS方法更有效。因此,C. Kou, Y. Dai(2015)对SSML-BFGS方法提出了一些适当的修改,使其满足充分下降条件。为了改进改进的SSML-BFGS方法,本文提出了一种有效的SSML-BFGS型三项共轭梯度法,用Ford-Moghrabi割线方程代替通常的割线方程求解无约束极小化问题。在一定的假设条件下,证明了该方法是全局收敛的。并将数值结果与常用的正割方程方法进行了比较。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A self-scaling memoryless BFGS based conjugate gradient method using multi-step secant condition for unconstrained minimization

Conjugate gradient methods are widely used for solving large-scale unconstrained optimization problems, because they do not need the storage of matrices. Based on the self-scaling memoryless Broyden-Fletcher-Goldfarb-Shanno (SSML-BFGS) method, new conjugate gradient algorithms CG-DESCENT and CGOPT have been proposed by W. Hager, H. Zhang (2005) and Y. Dai, C. Kou (2013), respectively. It is noted that the two conjugate gradient methods perform more efficiently than the SSML-BFGS method. Therefore, C. Kou, Y. Dai (2015) proposed some suitable modifications of the SSML-BFGS method such that the sufficient descent condition holds. For the sake of improvement of modified SSML-BFGS method, in this paper, we present an efficient SSML-BFGS-type three-term conjugate gradient method for solving unconstrained minimization using Ford-Moghrabi secant equation instead of the usual secant equations. The method is shown to be globally convergent under certain assumptions. Numerical results compared with methods using the usual secant equations are reported.

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来源期刊
Applications of Mathematics
Applications of Mathematics 数学-应用数学
CiteScore
1.50
自引率
0.00%
发文量
0
审稿时长
3.0 months
期刊介绍: Applications of Mathematics publishes original high quality research papers that are directed towards applications of mathematical methods in various branches of science and engineering. The main topics covered include: - Mechanics of Solids; - Fluid Mechanics; - Electrical Engineering; - Solutions of Differential and Integral Equations; - Mathematical Physics; - Optimization; - Probability Mathematical Statistics. The journal is of interest to a wide audience of mathematicians, scientists and engineers concerned with the development of scientific computing, mathematical statistics and applicable mathematics in general.
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