A ranking method based on two preference criteria: Chebyshev function and ε-indicator

Antonio López Jaimes, A. Oyama, K. Fujii
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引用次数: 9

Abstract

Previously a preference relation based on the Chebyshev achievement function to solve many-objective optimization problems was proposed. Although using this preference relation improved the performance of NSGA-II, in this paper we present a new ranking method based on the ∈-indicator and the Chebyshev achievement function. The goal of this new method is two fold: i) to improve the performance of the original algorithm, and ii) to design a parallel sorting method in order to use it with large populations (≫ 104 individuals). To do so, unlike the original approach, we have completely replaced the nondominated sorting by a method that ranks the population based on these two preference criteria. As the experiments show, the resulting algorithm outperforms both the standard NSGA-II and our previous approach in selected DTLZ problems. We also present a parallel implementation of the new sorting method. The running time analysis shows that the communication overhead is low enough to allow the speedup reach its peak for a large number of processors.
基于Chebyshev函数和ε-指标两个偏好标准的排序方法
先前提出了一种基于切比雪夫成就函数的偏好关系来解决多目标优化问题。虽然使用这种偏好关系提高了NSGA-II的性能,但在本文中,我们提出了一种基于∈-指标和Chebyshev成就函数的新的排序方法。这种新方法的目标有两个:1)提高原始算法的性能,2)设计一种并行排序方法,以便在大种群(大于104个个体)中使用它。为了做到这一点,与原来的方法不同,我们完全用一种基于这两个偏好标准对总体进行排名的方法取代了非支配排序。实验表明,所得到的算法在选定的DTLZ问题上优于标准NSGA-II和我们之前的方法。我们还提出了一种新的排序方法的并行实现。运行时分析表明,通信开销足够低,可以使大量处理器的加速达到峰值。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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