Some quality indicators have been proposed for benchmarking preference-based evolutionary multi-objective optimization algorithms using a reference point. Although a systematic review and analysis of the quality indicators are helpful for both benchmarking and practical decision-making, neither has been conducted. In this context, first, this paper reviews existing regions of interest and quality indicators for preference-based evolutionary multi-objective optimization using the reference point. We point out that each quality indicator was designed for a different region of interest. Then, this paper investigates the properties of the quality indicators. We demonstrate that an achievement scalarizing function value is not always consistent with the distance from a solution to the reference point in the objective space. We observe that the regions of interest can be significantly different depending on the position of the reference point and the shape of the Pareto front. We identify undesirable properties of some quality indicators. We also show that the ranking of preference-based evolutionary multi-objective optimization algorithms significantly depends on the choice of quality indicators.
翻译:虽然系统审查和分析质量指标有助于制定基准和实际决策,但没有进行这种审查和分析。首先,本文件利用参考点审查基于优惠的进化多目标优化的现有关注区域和质量指标。我们指出,每个质量指标都是为不同感兴趣的区域设计的。然后,本文件调查质量指标的特性。我们证明,实现的分级功能值并不总是与从解决方案到目标空间参考点的距离一致。我们观察到,根据参考点的位置和Pareto前线的形状,有关区域可能大不相同。我们找出一些质量指标的不良特性。我们还表明,基于优惠的进化多目标优化算值的排序在很大程度上取决于质量指标的选择。