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Finding preferred subsets of Pareto optimal solutions

机译:寻找帕累托最优解的首选子集

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Multi-objective optimization algorithms can generate large sets of Pareto optimal (non-dominated) solutions. Identifying the best solutions across a very large number of Pareto optimal solutions can be a challenge. Therefore it is useful for the decision-maker to be able to obtain a small set of preferred Pareto optimal solutions. This paper analyzes a discrete optimization problem introduced to obtain optimal subsets of solutions from large sets of Pareto optimal solutions. This discrete optimization problem is proven to be NP-hard. Two exact algorithms and five heuristics are presented to address this problem. Five test problems are used to compare the performances of these algorithms and heuristics. The results suggest that preferred subset of Pareto optimal solutions can be efficiently obtained using the heuristics, while for smaller problems, exact algorithms can be applied.
机译:多目标优化算法可以生成大量的帕累托最优(非支配)解决方案。在众多Pareto最佳解决方案中找出最佳解决方案可能是一个挑战。因此,对于决策者来说,获得少量的首选帕累托最优解是有用的。本文分析了引入的离散优化问题,以从大量的帕累托最优解中获得最优解子集。这种离散的优化问题被证明是NP难的。提出了两种精确的算法和五种启发式方法来解决此问题。使用五个测试问题来比较这些算法和启发式算法的性能。结果表明,使用启发式算法可以有效地获得Pareto最优解的首选子集,而对于较小的问题,可以应用精确的算法。

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