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A Visualisation Method for Pareto Front Approximations in Many-objective Optimisation

机译:在多目标优化中帕累托前近似的可视化方法

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Visualisation of Pareto Front (PF) approximations of many-objective optimisation problems (MaOP) is critical in understanding and solving a MaOP. Research is ongoing on developing effective visualisation methods with desired properties, such as simultaneously revealing dominance relations, PF shape, and the diversity of approximations. State-of-the-art visualisation methods in the literature often retain some of the preferred properties, but there are still shortfalls to address others. A new visualisation method is proposed in this paper, which covers the majority of the desired properties for visualisation methods. The proposed method is based on displaying PF approximations via projections on a reference vector versus distances to the same reference vector. The reference vector is created using nominal Ideal and Nadir points of existing nondominated PF approximation sets. MaF benchmark problems are used to demonstrate the effectiveness; results show that the proposed method exhibits a more balanced performance than the state-of-the-art in capturing desired visualisation properties.
机译:许多客观优化问题(MAOP)的帕累托前部(PF)近似的可视化对于理解和解决MAP至关重要。正在开发具有所需性质的有效可视化方法的研究正在进行,例如同时揭示优势关系,PF形状和近似的多样性。文献中最先进的可视化方法经常保留一些优选的属性,但仍然存在缺少其他人。本文提出了一种新的可视化方法,其涵盖了用于可视化方法的大部分所需性质。所提出的方法基于通过参考向量的投影显示PF近似,与相同的参考矢量的距离。使用现有的NondoMinated PF近似集的标称理想和Nadir点来创建参考矢量。 MAF基准问题用于证明效果;结果表明,在捕获所需的可视化性质时,该方法表现出比最先进的性能更平衡的性能。

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