摘要

In this paper, we develop a nonmonotone spectral memory gradient method for unconstrained optimization, where the spectral step-size and a class of memory gradient direction are combined efficiently. The global convergence is obtained by using a nonmonotone line search strategy and the numerical tests are also given to show the efficiency of the proposed algorithm.

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