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Original Articles

New conjugate gradient-like methods for unconstrained optimization

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Pages 1302-1316 | Received 20 Dec 2011, Accepted 24 Feb 2014, Published online: 07 Apr 2014
 

Abstract

The fact that classical conjugate gradient (CG) methods are usually analyzed individually with fixed formulas and line searches is a limit to research, since the descent or convergence property of a CG method depends heavily on the update formula and line search technique, which may cause the problem that once these conditions change, the descent or convergence property does not maintain any more. To overcome this drawback, we propose a new general form of CG-like methods, which is attractive in that its descent and global convergence properties are always guaranteed independently of any formula and line search used, provided that an easy condition on the line search rule is fulfilled. Numerical results are given to show the efficiency of the proposed methods. A new way to generate sufficient descent directions is also introduced.

AMS Subject Classification:

Acknowledgements

The authors are deeply indebted to the associate editor and two anonymous referees whose many valuable comments and constructive suggestions have significantly improved this paper. The authors also would like to thank Professor W.W. Hager and Dr H. Zhang for their codes.

Funding

This work was supported by the Natural Science Foundation of China [grant number 71272086].

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