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Lazy Greedy Hypervolume Subset Selection from Large Candidate Solution Sets

机译:从大型候选解决方案集中选择惰性贪婪超卷子集

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Subset selection is a popular topic in recent years and a number of subset selection methods have been proposed. Among those methods, hypervolume subset selection is widely used. Greedy hypervolume subset selection algorithms can achieve good approximations to the optimal subset. However, when the candidate set is large (e.g., an unbounded external archive with a large number of solutions), the algorithm is very time-consuming. In this paper, we propose a new lazy greedy algorithm exploiting the submodular property of the hypervolume indicator. The core idea is to avoid unnecessary hypervolume contribution calculation when finding the solution with the largest contribution. Experimental results show that the proposed algorithm is hundreds of times faster than the original greedy inclusion algorithm and several times faster than the fastest known greedy inclusion algorithm on many test problems.
机译:子集选择是近年来流行的话题,并且已经提出了许多子集选择方法。在这些方法中,超量子集选择被广泛使用。贪婪的超卷子集选择算法可以对最佳子集实现良好的近似。但是,当候选集很大时(例如,具有大量解决方案的无限制外部存档),该算法非常耗时。在本文中,我们提出了一种利用超量指标的子模属性的新的懒惰贪婪算法。核心思想是在找到贡献最大的解决方案时避免不必要的超体积贡献计算。实验结果表明,在许多测试问题上,该算法比原始贪婪包含算法快数百倍,比最快已知贪婪包含算法快几倍。

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