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Reinvestigation of evolutionary many-objective optimization: Focus on the Pareto knee front

机译:进化的进化性多目标优化的再调查:专注于帕累托膝盖前线

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Approximating the entire Pareto front (PF) in many-objective optimization is challenging but often unnecessary because a decision maker is usually only interested in a small portion of the PF. Assuming no preference, we argue that a more appropriate way to address many-objective optimization problems (MaOPs) is to find Pareto-optimal knee solutions-solutions where small improvements in one objective will lead to severe degradation in at least one other objective. Herein, we propose such a method, which uses a distance-based indicator to first identify knee points (knee-detection phase) and then uses a refined fitness assignment strategy to select solutions near the knee points (knee-selection phase). The proposed method is integrated into two traditional algorithms, resulting in k-NSGA-II and k-MOEA/D. We discuss the effects of the parameter that controls the width of the knee region(s) and then analyze the effects of different methods for identifying knee points in the knee-detection phase. Finally, we examine the performances of k-NSGA-II and k-MOEA/D on a set of knee benchmark problems. The experimental results show that k-NSGA-II is competitive on knee test problems with 2 and 4 objectives, while k-MOEA/D performs better than k-NSGA-II with 6 and 8 objectives. (C) 2020 Published by Elsevier Inc.
机译:在许多客观优化中近似整个帕累托前部(PF)是具有挑战性的,但通常不必要,因为决策者通常只对PF的一小部分感兴趣。假设不偏好,我们争辩说,一种更合适的方法来解决多目标优化问题(MAOPS)是找到帕累托最优的膝盖解决方案 - 一个目标的小改善将导致至少一个其他目标的严重降解。这里,我们提出了这种方法,该方法使用距离的指示器首先识别膝关节点(膝关节检测阶段),然后使用精细的健身分配策略来选择膝盖点附近的解决方案(膝关节阶段)。该方法将该方法集成到两个传统算法中,导致K-NSGA-II和K-MOEA / D.我们讨论控制膝关节区域宽度的参数的效果,然后分析不同方法识别膝关节阶段膝关节点的效果。最后,我们研究了一套膝关节基准问题的K-NSGA-II和K-MOEA / D的性能。实验结果表明,K-NSGA-II对膝关节试验问题竞争2和4目的,而K-MOEA / D比K-NSGA-II更好,具有6和8个目标。 (c)由elsevier公司发布的2020年

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