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Large-Scale Global Optimization Using Cooperative Coevolution with Variable Interaction Learning

机译:协同变量协同学习的大规模全局优化

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In recent years, Cooperative Coevolution (CC) was proposed as a promising framework for tackling high-dimensional optimization problems. The main idea of CC-based algorithms is to discover which decision variables, i.e, dimensions, of the search space interact. Non-interacting variables can be optimized as separate problems of lower dimensionality. Interacting variables must be grouped together and optimized jointly. Early research in this area started with simple attempts such as one-dimension based and splitting-in-half methods. Later, more efficient algorithms with new grouping strategies, such as DECC-G and MLCC, were proposed. However, those grouping strategies still cannot sufficiently adapt to different group sizes. In this paper, we propose a new CC framework named Cooperative Coevolution with Variable Interaction Learning (CCVIL), which initially considers all variables as independent and puts each of them into a separate group. Iteratively, it discovers their relations and merges the groups accordingly. The efficiency of the newly proposed framework is evaluated on the set of large-scale optimization benchmarks.
机译:近年来,协作协同进化(CC)被提出作为解决高维优化问题的有前途的框架。基于CC的算法的主要思想是发现搜索空间的哪些决策变量(即维度)相互影响。可以将非交互变量优化为较低维度的单独问题。交互变量必须组合在一起并共同优化。该领域的早期研究始于简单的尝试,例如基于一维的方法和半分裂方法。后来,提出了具有新分组策略的更有效算法,例如DECC-G和MLCC。但是,这些分组策略仍然不能充分适应不同的组大小。在本文中,我们提出了一个新的CC框架,名为带有变量交互学习的协作式协同进化(CCVIL),该框架最初将所有变量视为独立变量,并将每个变量放在一个单独的组中。迭代地,它发现它们之间的关系并相应地合并这些组。新提出的框架的效率是根据一组大型优化基准进行评估的。

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