修复过程对多目标0/1背包问题EMO算法性能的影响

H. Ishibuchi, Shiori Kaige
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引用次数: 30

摘要

在文献中,多目标0/1背包问题已被用于检验EMO(进化多目标优化)算法的性能。我们证明了它们在这种测试问题上的性能在很大程度上取决于修复程序的选择。我们通过计算实验证明,基于加权标量适应度函数的贪婪修复比在许多研究中常用的最大利润/权重比排序获得了更好的结果。这一观察解释了一些关于带有加权标量适应度函数的EMO算法优越性的比较研究中报道的结果。研究还表明,在修复过程中使用加权标量适应度函数可以显著提高基于Pareto排序的EMO算法的性能。我们还研究了随机贪婪修复,其中物品是根据相对于随机选择的背包的利润/重量比排序的。
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Effects of repair procedures on the performance of EMO algorithms for multiobjective 0/1 knapsack problems
Multiobjective 0/1 knapsack problems have been used for examining the performance of EMO (evolutionary multiobjective optimization) algorithms in the literature. We demonstrate that their performance on such a test problem strongly depends on the choice of a repair procedure. We show through computational experiments that much better results are obtained from greedy repair based on a weighted scalar fitness function than the maximum profit/weight ratio, which has been often used for ordering items in many studies. This observation explains several reported results in comparative studies about the superiority of EMO algorithms with a weighted scalar fitness function. It is also shown that the performance of EMO algorithms based on Pareto ranking is significantly improved by the use of the weighted scalar fitness function in repair procedures. We also examine randomized greedy repair, where items are ordered based on the profit/weight ratio with respect to a randomly selected knapsack.
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