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Diversity Comparison of Pareto Front Approximations in Many-Objective Optimization

机译:多目标优化中Pareto前沿逼近的多样性比较

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摘要

Diversity assessment of Pareto front approximations is an important issue in the stochastic multiobjective optimization community. Most of the diversity indicators in the literature were designed to work for any number of objectives of Pareto front approximations in principle, but in practice many of these indicators are infeasible or not workable when the number of objectives is large. In this paper, we propose a diversity comparison indicator (DCI) to assess the diversity of Pareto front approximations in many-objective optimization. DCI evaluates relative quality of different Pareto front approximations rather than provides an absolute measure of distribution for a single approximation. In DCI, all the concerned approximations are put into a grid environment so that there are some hyperboxes containing one or more solutions. The proposed indicator only considers the contribution of different approximations to nonempty hyperboxes. Therefore, the computational cost does not increase exponentially with the number of objectives. In fact, the implementation of DCI is of quadratic time complexity, which is fully independent of the number of divisions used in grid. Systematic experiments are conducted using three groups of artificial Pareto front approximations and seven groups of real Pareto front approximations with different numbers of objectives to verify the effectiveness of DCI. Moreover, a comparison with two diversity indicators used widely in many-objective optimization is made analytically and empirically. Finally, a parametric investigation reveals interesting insights of the division number in grid and also offers some suggested settings to the users with different preferences.
机译:在随机多目标优化社区中,Pareto前沿逼近的多样性评估是一个重要问题。原则上,文献中的大多数多样性指标都设计为可用于任意数量的帕累托前沿近似目标,但实际上,当目标数量很大时,许多此类指标不可行或不可行。在本文中,我们提出了一种多样性比较指标(DCI)来评估多目标优化中Pareto前沿逼近的多样性。 DCI评估不同Pareto前沿逼近的相对质量,而不是为单个逼近提供绝对的分布度量。在DCI中,所有相关的近似值都放入网格环境中,因此有些超级盒包含一个或多个解决方案。拟议的指标仅考虑了不同近似值对非空超框的贡献。因此,计算成本不会随着目标数量的增加而指数增加。实际上,DCI的实现具有二次时间复杂度,这完全独立于网格中使用的划分数量。使用三组人工帕累托前逼近和七组真实帕累托前逼近(具有不同数量的目标)进行系统实验,以验证DCI的有效性。此外,在分析和经验上与在多目标优化中广泛使用的两个多样性指标进行了比较。最后,参数研究揭示了网格中分区数的有趣见解,还为具有不同偏好的用户提供了一些建议的设置。

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