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Implicit enumeration strategies for the hypervolume subset selection problem

机译:超量子集选择问题的隐式枚举策略

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The hypervolume subset selection problem arises within selection procedures of multiobjective evolutionary algorithms as well as for extracting a succinct subset of optimal solutions of a multiobjective optimization problem. Although efficient algorithms are known for two dimensions, this problem becomes NP-hard for more dimensions. In this article, we introduce an integer linear programming formulation for this problem for more than two dimensions that is based on the decomposition of the dominated region of the set of nondominated points. Moreover, we propose a branch and bound algorithm that uses combinatorial arguments and discuss bounding strategies based on the application of three upper bounds. We analyze the performance of the two solution approaches on a wide range of instances. The results indicate that the branch and bound algorithm has better performance for several orders of magnitude. (C) 2018 Elsevier Ltd. All rights reserved.
机译:超量子集选择问题出现在多目标进化算法的选择过程中,以及提取多目标优化问题的最优解的简洁子集。尽管有效的算法对于二维是已知的,但是对于更大的维度,此问题变得难以解决。在本文中,我们针对此问题针对大于二维的整数引入了整数线性规划公式,该公式基于非支配点集的支配区域的分解。此外,我们提出了一种使用组合参数的分支定界算法,并基于三个上限的应用讨论了定界策略。我们分析了两种解决方案在各种情况下的性能。结果表明,分支定界算法在几个数量级上具有更好的性能。 (C)2018 Elsevier Ltd.保留所有权利。

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