A class of derivative-free trust-region methods with interior backtracking technique for nonlinear optimization problems subject to linear inequality constraints

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作者
Jing Gao
Jian Cao
机构
[1] Beihua University,School of Mathematics and Statistics
[2] Beihua University,School of Information Technology and Media
关键词
Affine scaling; Trust-region method; Inequality constraints; Derivative-free optimization; Interior backtracking technique; 49M37; 65K05; 90C30; 90C51;
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摘要
This paper focuses on a class of nonlinear optimization subject to linear inequality constraints with unavailable-derivative objective functions. We propose a derivative-free trust-region methods with interior backtracking technique for this optimization. The proposed algorithm has four properties. Firstly, the derivative-free strategy is applied to reduce the algorithm’s requirement for first- or second-order derivatives information. Secondly, an interior backtracking technique ensures not only to reduce the number of iterations for solving trust-region subproblem but also the global convergence to standard stationary points. Thirdly, the local convergence rate is analyzed under some reasonable assumptions. Finally, numerical experiments demonstrate that the new algorithm is effective.
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