Reliability of convergence metric and hypervolume indicator for many-objective optimization

Monalisa Pal, S. Bandyopadhyay
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引用次数: 8

Abstract

With the emergence and growth of Many-Objective Optimization algorithms, there has been an increased necessity to formulate new metrics that can perform quantitative assessment of the Pareto-Front returned as a solution from a Many-Objective Optimization algorithm. Out of the many evaluation metrics in use, convergence metric and hypervolume indicator have gained immense attention. This paper demonstrates how optimality obtained with respect to one or both of these metrics can be misleading at times. The demonstration is done in two-dimensional scenarios which suggests that the disadvantages of these metrics can be more pronounced when the applications are in higher dimensional space which not only has scalability issues but also where visualization of the space is not feasible. The paper is concluded stating the need for efficient evaluation metric which will accumulate information from the Pareto-Front in terms of convergence, diversity, number of solution (discarding outliers) and shape of the surface.
多目标优化中收敛度量和超大体积指标的可靠性
随着多目标优化算法的出现和发展,越来越有必要制定新的指标,以对多目标优化算法返回的Pareto-Front进行定量评估。在目前使用的众多评价指标中,收敛指标和超大容量指标受到了极大的关注。本文演示了这些指标中一个或两个指标的最优性有时是如何产生误导的。该演示是在二维场景中完成的,这表明当应用程序处于高维空间时,这些指标的缺点会更加明显,因为高维空间不仅存在可伸缩性问题,而且空间的可视化也不可行。最后指出需要一种有效的评价指标,该指标能够从Pareto-Front的收敛性、多样性、解的数量(丢弃异常值)和曲面的形状等方面积累信息。
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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