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Validating the Grid Diversity Operator: An Infusion Technique for Diversity Maintenance in Population-Based Optimisation Algorithms

机译:验证网格分集运算符:基于人口的优化算法中的多样性维护输液技术

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We describe a novel diversity method named Grid Diversity Operator (GDO) that can be incorporated into population-based optimization algorithms that support the use of infusion techniques to inject new material into a population. By replacing the random infusion mechanism used in many optimisation algorithms, the GDO guides the containing algorithm towards creating new individuals in sparsely visited areas of the search space. Experimental tests were performed on a set of 39 multimodal benchmark problems from the literature using GDO in conjunction with a popular immune-inspired algorithm (opt-ainet) and a sawtooth genetic algorithm. The results show that the GDO operator leads to better quality solutions in all of the benchmark problems as a result of maintaining higher diversity, and makes more efficient usage of the allowed number of objective function evaluations. Specifically, we show that the performance gain from using GDO increases as the dimensionality of the problem instances increases. An exploration of the parameter settings for the two main parameters of the new operator enabled the performance of the operator to be tuned empirically.
机译:我们描述了一种名为网格分集运算符(GDO)的新型多样性方法,可以纳入基于人口的优化算法,支持使用输液技术将新材料注入群体。通过替换许多优化算法中使用的随机输注机制,GDO将指导含有算法在搜索空间的稀疏访问区域中创建新的个人。使用GDO与流行的免疫激发算法(OINET)和锯齿遗传算法一起对来自文献的39个多模式基准问题进行实验测试。结果表明,由于维持更高的多样性,GDO运营商在所有基准问题中导致所有基准问题的质量解决方案,并更有效地使用允许数量的客观函数评估。具体地,我们表明,随着问题实例的维度增加,使用GDO的性能增益增加。新操作员两个主要参数参数设置的探索使得操作员的性能能够经验进行调整。

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