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Two-objective solution set optimization to maximize hypervolume and decision space diversity in multiobjective optimization

机译:在多目标优化中最大化超量和决策空间多样性的两目标解决方案集优化

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Diversity maintenance in the decision space is a recent hot topic in the field of evolutionary multiobjective optimization (EMO). In this paper, we propose the use of a decision space diversity measure as an objective function in a two-objective formulation of solution set optimization where the hypervolume measure is used as the other objective. In the proposed approach, a given multiobjective problem with an arbitrary number of objectives is handled as a two-objective solution set optimization problem. A solution of our two-objective problem is a set of non-dominated solutions of the original multiobjective problem. An EMO algorithm is used to search for a number of solution sets along the tradeoff surface between the diversity maximization in the decision space and the hypervolume maximization in the objective space. In this paper, first we numerically examine the diversity measure of Solow & Polasky (1994), which was used in recent studies of Ulrich et al. (2010, 2011), through computational experiments on many-objective distance minimization problems in a two-dimensional decision space. Then we formulate a two-objective solution set optimization problem to maximize the decision space diversity and the objective space hypervolume. Finally we demonstrate that a number of non-dominated solution sets can be obtained along the diversity-hypervolume tradeoff surface. Through computational experiments, we also examine the difference between the following two settings for diversity calculation: All solutions in a solution set are used in one setting while only non-dominated solutions are used in the other setting.
机译:决策空间中的多样性维护是进化多目标优化(EMO)领域中的最新热点。在本文中,我们建议在解决方案集优化的两个目标公式中使用决策空间多样性度量作为目标函数,其中将超量度量用作另一个目标。在提出的方法中,将具有任意数量目标的给定多目标问题作为两目标解决方案集优化问题进行处理。我们的两个目标问题的解决方案是一组原始原始多目标问题的非控制解决方案。 EMO算法用于在决策空间中的分集最大化和目标空间中的超量最大化之间的权衡曲面上搜索许多解集。在本文中,首先我们对Solow&Polasky(1994)的多样性度量进行数值检验,该度量用于Ulrich等人的最新研究。 (2010,2011),通过对二维决策空间中多目标距离最小化问题的计算实验。然后,我们提出了一个两目标解集优化问题,以最大化决策空间的多样性和目标空间的超体积。最后,我们证明了沿着多样性-超体积权衡面可以获得许多非支配的解集。通过计算实验,我们还检查了以下两个设置之间的差异,以进行分集计算:一个设置中使用一个解决方案集中的所有解决方案,而另一个设置中仅使用非主导解决方案。

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