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Global Convergence of Curve Search Methods for Unconstrained Optimization

Global Convergence of Curve Search Methods for Unconstrained Optimization
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摘要 In this paper we propose a new family of curve search methods for unconstrained optimization problems, which are based on searching a new iterate along a curve through the current iterate at each iteration, while line search methods are based on finding a new iterate on a line starting from the current iterate at each iteration. The global convergence and linear convergence rate of these curve search methods are investigated under some mild conditions. Numerical results show that some curve search methods are stable and effective in solving some large scale minimization problems. In this paper we propose a new family of curve search methods for unconstrained optimization problems, which are based on searching a new iterate along a curve through the current iterate at each iteration, while line search methods are based on finding a new iterate on a line starting from the current iterate at each iteration. The global convergence and linear convergence rate of these curve search methods are investigated under some mild conditions. Numerical results show that some curve search methods are stable and effective in solving some large scale minimization problems.
作者 Zhiwei Xu Yongning Tang Zhen-Jun Shi Zhiwei Xu;Yongning Tang;Zhen-Jun Shi(Computer and Information Science, University of Michigan, Dearborn, MI, USA;School of Information Technology, Illinois State University, Normal, IL, USA;Mathematics and Computer Science, Central State University, Wilberforce, OH, USA)
出处 《Applied Mathematics》 2016年第7期721-735,共15页 应用数学(英文)
关键词 Unconstrained Optimization Curve Search Method Global Convergence Convergence Rate Unconstrained Optimization Curve Search Method Global Convergence Convergence Rate
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