The convergence of subspace trust region methods

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摘要

The trust region method is an effective approach for solving optimization problems due to its robustness and strong convergence. However, the subproblem in the trust region method is difficult or time-consuming to solve in practical computation, especially in large-scale problems. In this paper we consider a new class of trust region methods, specifically subspace trust region methods. The subproblem in these methods has an adequate initial trust region radius and can be solved in a simple subspace. It is easier to solve than the original subproblem because the dimension of the subproblem in the subspace is reduced substantially. We investigate the global convergence and convergence rate of these methods.

论文关键词:90C30,65K05,49M37,Unconstrained optimization,Subspace trust region method,Global convergence,Convergence rate

论文评审过程:Received 7 November 2008, Revised 17 February 2009, Available online 9 March 2009.

论文官网地址:https://doi.org/10.1016/j.cam.2009.02.100