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Interval Differential Evolution Using Structural Information of Global Optimization Problems

机译:利用全局优化问题的结构信息进行区间差分演化

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Differential Evolution (DE) algorithms are a promising strategy to Numerical Constrained Global Optimization Problems (NCOP). Most DE recent variants are applied to black-box optimization problems, where the analytical structure of the NCOP instance is unknown. In this paper we present an Interval Differential Evolution (InDE) algorithm that explores the structural information of the problem. The instance structure is represented by a hypergraph Epiphytic decomposition, where the variables are intervals. InDE algorithm is based on several strategies used in state-of-the-art DE implementations. Based on structural information, our approach extracts a subset of variables of the instance that are critical to the search process. The DE population individuals encode only this subset of variables. The other variables of the instance are val-uated by a linear cost constraint propagation over the hypergraph structure. Our experiments show that the use of structural information associated with interval local consistency techniques significantly improves the performance of DE algorithm.
机译:差分演化(DE)算法是解决数值约束全局优化问题(NCOP)的有前途的策略。大多数DE最近的变体都适用于黑盒优化问题,其中NCOP实例的分析结构未知。在本文中,我们提出了一种区间差分演化(InDE)算法,该算法探索了问题的结构信息。实例结构由超图附生分解表示,其中变量为区间。 InDE算法基于最新的DE实现中使用的几种策略。基于结构信息,我们的方法提取了对搜索过程至关重要的实例变量的子集。 DE人口个体仅编码此变量子集。实例的其他变量由超图结构上的线性成本约束传播来评估。我们的实验表明,与区间局部一致性技术相关的结构信息的使用显着提高了DE算法的性能。

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