Article ID Journal Published Year Pages File Type
4636638 Applied Mathematics and Computation 2006 13 Pages PDF
Abstract
In this paper we propose a new class of supermemory gradient methods for unconstrained optimization problems. Trust region approach is used in the new algorithms to guarantee the global convergence. In each iteration, the new algorithms generate a suitable trust region radius automatically and obtain the next iterate by solving a simple subproblem. These algorithms converge stably and averagely due to using more iterative information at each iteration, and can be reduced to quasi-Newton methods when the iterate is close to the optimal solution. Numerical results show that this new class of supermemory gradient methods is effective in practical computation.
Related Topics
Physical Sciences and Engineering Mathematics Applied Mathematics
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