Abstract

In this paper, a modified conjugate gradient method is proposed for nonconvex optimization. This method possesses the sufficient descent property independent of any line search. The global convergence property of the algorithm is established under the Wolfe line search strategy or the Armijo line search condition, respectively. Additionally, the complexity analysis of the proposed algorithm is investigated. To reach the point with the norm of the gradient below ɛ, the worst-case complexity bound matches that of the gradient method. Moreover, the obtained numerical results demonstrate that the modified method is effective for large-scale optimization problems and image restoration problems.

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