Global Convergence of the Non-Quasi-Newton Method with Non-Monotone Line Search for Unconstrained Optimization Problem
نویسنده
چکیده
In this paper, non-monotone line search procedure is studied, which is combined with the non-quasi-Newton family. Under the uniformly convexity assumption on objective function, the global and superlinear convergence of the non-quasi-Newton family with the proposed nonmonotone line search is proved under suitable conditions.
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