A new performance metric for user-preference based multi-objective evolutionary algorithms

A. Mohammadi, M. Omidvar, Xiaodong Li
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引用次数: 60

Abstract

In this paper, we propose a metric for evaluating the performance of user-preference based evolutionary multiobjective algorithms by defining a preferred region based on the location of a user-supplied reference point. This metric uses a composite front which is a type of reference set and is used as a replacement for the Pareto-optimal front. This composite front is constructed by extracting the non-dominated solutions from the merged solution sets of all algorithms that are to be compared. A preferred region is then defined on the composite front based on the location of a reference point. Once the preferred region is defined, existing evolutionary multi-objective performance metrics can be applied with respect to the preferred region. In this paper the performance of a cardinality-based metric, a distance-based metric, and a volume-based metric are compared against a baseline which relies on knowledge of the Pareto-optimal front. The experimental results show that the distance-based and the volume-based metrics are consistent with the baseline, showing meaningful comparisons. However, the cardinality-based approach shows some inconsistencies and is not suitable for comparing the algorithms.
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基于用户偏好的多目标进化算法的性能度量
在本文中,我们提出了一种基于用户偏好的进化多目标算法的性能评估指标,该算法基于用户提供的参考点的位置定义了一个首选区域。这个指标使用了一个复合前沿,这是一种参考集,用来替代帕累托最优前沿。该复合前沿是通过从所有待比较算法的合并解集中提取非支配解来构建的。然后根据参考点的位置在复合前沿上定义优选区域。一旦确定了首选区域,现有的进化多目标性能指标就可以应用于首选区域。本文将基于基数的度量、基于距离的度量和基于体积的度量的性能与依赖于帕累托最优前沿知识的基线进行比较。实验结果表明,基于距离和基于体积的度量与基线一致,具有比较意义。然而,基于基数的方法显示出一些不一致性,不适合比较算法。
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