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Strongly sub-feasible direction method for constrained optimization problems with nonsmooth objective functions

机译:具有不光滑目标函数的约束优化问题的强次可行方向方法

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摘要

In this paper, we propose a strongly sub-feasible direction method for the solution of inequality constrained optimization problems whose objective functions are not necessarily differentiable. The algorithm combines the subgradient aggregation technique with the ideas of generalized cutting plane method and of strongly sub-feasible direction method, and as results a new search direction finding subproblem and a new line search strategy are presented. The algorithm can not only accept infeasible starting points but also preserve the "strong sub-feasibility" of the current iteration without unduly increasing the objective value. Moreover, once a feasible iterate occurs, it becomes automatically a feasible descent algorithm. Global convergence is proved, and some preliminary numerical results show that the proposed algorithm is efficient.
机译:本文针对目标函数不一定可微的不等式约束优化问题,提出了一种强次可行的方向方法。该算法将次梯度聚合技术与广义切平面法和强次可行方向法的思想相结合,提出了一种新的搜索方向寻找子问题和一种新的线搜索策略。该算法不仅可以接受不可行的起点,而且可以在不过度增加目标值的情况下保留当前迭代的“强大的子可行性”。此外,一旦发生可行的迭代,它将自动变为可行的下降算法。证明了全局收敛性,一些初步的数值结果表明该算法是有效的。

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