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The robust constant and its applications in random global search for unconstrained global optimization

机译:鲁棒常数及其在无约束全局优化的随机全局搜索中的应用

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摘要

Robust analysis is important for designing and analyzing algorithms for global optimization. In this paper, we introduce a new concept, robust constant, to quantitatively characterize the robustness of measurable sets and functions. The new concept is consistent to the theoretical robustness presented in literatures. This paper shows that, from the respects of convergence theory and numerical computational cost, robust constant is valuable significantly for analyzing random global search methods for unconstrained global optimization.
机译:稳健的分析对于设计和分析全局优化算法很重要。在本文中,我们引入了一个新概念,鲁棒常数,以定量地描述可测量集合和函数的鲁棒性。新概念与文献中提出的理论鲁棒性是一致的。本文表明,从收敛理论和数值计算成本的角度来看,鲁棒常数对于分析无约束全局优化的随机全局搜索方法具有重要价值。

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