It is well known that the line search methods play a very important role for optimization problems. In this paper a new line search method is proposed for solving unconstrained optimization. Under weak conditions, this method possesses global convergence and R-linear convergence for nonconvex function and convex function, respectively. Moreover, the given search direction has sufficiently descent property and belongs to a trust region without carrying out any line search rule. Numerical results show that the new method is effective.
CITATION STYLE
Yuan, G., Lu, S., & Wei, Z. (2010). A Line Search Algorithm for Unconstrained Optimization. Journal of Software Engineering and Applications, 03(05), 503–509. https://doi.org/10.4236/jsea.2010.35057
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