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A dynamic selection strategy for classification based surrogate-assisted multi-objective evolutionary algorithms

机译:基于分类的代理辅助多目标进化算法的动态选择策略

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Multi-objective problems (MOPs) consist of at least two objectives and they conflict with each other. A class of expensive problems is one of multi-objective problem class, that requires high costs for large calculations, large space, and large number of objectives. The useful and popular method for expensive problems is the use of surrogate models. There are many techniques used in surrogate models, such as RBF, PRS, Kriging, SVM, ANN…, that are used and achieve relatively good results. One problem, however, is the choice of time to update the model, the selection of reference data… Those actions are very important in an evolutionary process. The parameters for control those action usually predefined, so it might reduces the adaptability of algorithms. In this paper, we analyze a dynamic selection method of reference solutions based on information from the population, the evolution process to produce better results, with each different problem.
机译:多目标问题(MOP)包括至少两个目标,它们相互冲突。 一类昂贵的问题是多目标问题类之一,需要大的计算,大空间和大量目标的高成本。 昂贵问题的有用和流行的方法是使用代理模型。 代理模型中使用了许多技术,例如RBF,PRS,Kriging,SVM,ANN ......,其使用和实现相对良好的效果。 然而,一个问题是选择更新模型的时间,选择参考数据...这些动作在进化过程中非常重要。 控制这些动作的参数通常预定义,因此它可以降低算法的适应性。 在本文中,我们根据群体的信息分析了参考解决方案的动态选择方法,进化过程产生了更好的结果,每个不同的问题。

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