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Schematic study on interaction and imbalance effects of variables for Large-Scale Optimization

机译:大规模优化变量相互作用和不平衡效应的示意图研究

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In the recent years, Large-Scale Global Optimization (LSGO) algorithms attempt to solve real-world problems efficiently. The imbalance in the contribution of variables and the interaction among variables pose major challenges for LSGO algorithms. This paper proposes mapping schemes based on the interaction among variables and the imbalance in the contribution of variables. The proposed mapping schemes present the different relations between the constructed class of variables according to the interaction feature and the constructed class of variables according to the imbalance feature. Covering a wide range of real-world problems is considered in the mapping schemes; therefore it can provide some insights to design LSGO benchmark suites. By developing LSGO benchmark suites with the ability of representing many-real world problems, researchers will be motivated to realize the success or failure level of LSGO algorithms for tackling various types of LSGO problems. Also, a preliminary set of experiments is conducted to present the importance of considered features in each scheme.
机译:近年来,大规模全局优化(LSGO)算法试图有效解决现实世界中的问题。变量贡献的不平衡以及变量之间的相互作用给LSGO算法带来了重大挑战。本文提出了一种基于变量之间的相互作用和变量贡献不平衡的映射方案。所提出的映射方案提出了根据相互作用特征构造的变量类别与根据不平衡特征构造的变量类别之间的不同关系。映射方案中考虑了涵盖广泛的现实问题。因此,它可以为设计LSGO基准套件提供一些见识。通过开发具有表示许多实际问题的能力的LSGO基准套件,研究人员将被激励实现解决各种LSGO问题的LSGO算法的成功或失败水平。此外,进行了一组初步的实验,以介绍每种方案中考虑到的功能的重要性。

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