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A new general form of conjugate gradient methods with guaranteed descent and strong global convergence properties

机译:具有保有下降性和强全局收敛性的共轭梯度方法的新形式

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摘要

Although the study of global convergence of the Polak–Ribière–Polyak (PRP), Hestenes–Stiefel (HS) and Liu–Storey (LS) conjugate gradient methods has made great progress, the convergence of these algorithms for general nonlinear functions is still erratic, not to mention under weak conditions on the objective function and weak line search rules. Besides, it is also interesting to investigate whether there exists a general method that converges under the standard Armijo line search for general nonconvex functions, since very few relevant results have been achieved. So in this paper, we present a new general form of conjugate gradient methods whose theoretical significance is attractive. With any formula β k ≥ 0 and under weak conditions, the proposed method satisfies the sufficient descent condition independently of the line search used and the function convexity, and its global convergence can be achieved under the standard Wolfe line search or even under the standard Armijo line search. Based on this new method, convergence results on the PRP, HS, LS, Dai–Yuan–type (DY) and Conjugate–Descent–type (CD) methods are established. Preliminary numerical results show the efficiency of the proposed methods.
机译:尽管Polak–Ribière–Polyak(PRP),Hestenes–Stiefel(HS)和Liu–Storey(LS)共轭梯度方法的全局收敛性研究取得了很大进展,但是这些算法对于一般非线性函数的收敛性仍然不稳定,更不用说在弱条件下的目标函数和弱线搜索规则了。此外,研究是否有一种通用的方法可以收敛于标准的Armijo线搜索以求出一般的非凸函数,这也很有趣,因为已经获得了很少的相关结果。因此,在本文中,我们提出了一种新的一般形式的共轭梯度法,其理论意义是诱人的。对于任何公式βk ≥0且在弱条件下,所提出的方法都可以满足足够的下降条件,而与所使用的线搜索和函数凸度无关,并且可以在标准Wolfe线搜索甚至是标准条件下实现其全局收敛。在标准Armijo线下搜索。基于这种新方法,建立了PRP,HS,LS,Dai-Yuan型(DY)和Conjugate-Descent-type(CD)方法的收敛结果。初步数值结果表明了所提方法的有效性。

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