A self-adjusting spectral conjugate gradient method for large-scale unconstrained optimization

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Abstract

This paper presents a hybrid spectral conjugate gradient method for large-scale unconstrained optimization, which possesses a self-adjusting property. Under the standard Wolfe conditions, its global convergence result is established. Preliminary numerical results are reported on a set of large-scale problems in CUTEr to show the convergence and efficiency of the proposed method. © 2013 Yuanying Qiu et al.

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Qiu, Y., Cui, D., Xue, W., & Yu, G. (2013). A self-adjusting spectral conjugate gradient method for large-scale unconstrained optimization. Abstract and Applied Analysis, 2013. https://doi.org/10.1155/2013/814912

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