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Experiments on Greedy and Local Search Heuristics for d-dimensional Hypervolume Subset Selection

机译:用于超体积子集选择的贪婪和局部搜索启发式实验

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摘要

Subset selection constitutes an important stage of any evolutionary multiobjective optimization algorithm when truncating the current approximation set for the next iteration. This appears to be particularly challenging when the number of solutions to be removed is large, and when the approximation set contains many mutually non-dominating solutions. In particular, indicator-based strategies have been intensively used in recent years for that purpose. However, most solutions for the indicator-based subset selection problem are based on a very simple greedy backward elimination strategy. In this paper, we experiment additional heuristics that include a greedy forward selection and a greedy sequential insertion policies, a first-improvement hill-climbing local search, as well as combinations of those. We evaluate the effectiveness and the efficiency of such heuristics in order to maximize the enclosed hypervolume indicator of candidate subsets during a hypothetical evolutionary process, or as a post-processing phase. Our experimental analysis, conducted on randomly generated as well as structured two-, three- and four-objective mutually non-dominated sets, allows us to appreciate the benefit of these approaches in terms of quality, and to highlight some practical limitations and open challenges in terms of computational resources.
机译:子集选择在截断下一个迭代的当前近似集时构成任何进化多目标优化算法的重要阶段。当要删除的解决方案数量很大,并且近似集包含许多互不主导的解决方案时,这似乎特别具有挑战性。特别是,为此目的,近年来已广泛使用基于指标的策略。但是,大多数基于指标的子集选择问题的解决方案都基于非常简单的贪婪后向消除策略。在本文中,我们尝试了其他启发式方法,包括贪婪的前向选择和贪婪的顺序插入策略,首次改进的爬坡局部搜索以及它们的组合。我们评估这种启发式方法的有效性和效率,以便在假设的进化过程中或在后处理阶段最大化候选子集的封闭超量指标。我们对随机生成的以及结构化的两个,三个和四个目标互不支配的集合进行的实验分析,使我们能够体会到这些方法在质量方面的优势,并强调一些实际的局限性和开放性挑战在计算资源方面。

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