Collaborative and Adaptive Strategies of Different Scalarizing Functions in MOEA/D

Miriam Pescador-Rojas, C. Coello
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引用次数: 6

Abstract

In recent years, the use of decomposition-based multi-objective evolutionary algorithms has been very successful in solving both multi- and many-objective optimization problems. In these algorithms, the adopted Scalarizing Functions (SFs) play a crucial role in their performance. Methods such as the Modified Weighted Chebyshev (MCHE), Penalty Boundary Intersection (PBI) and Augmented Achievement Scalarizing Function (AASF) have been found to be very effective for achieving both convergence to the true Pareto front and a uniform distribution of solutions along it. However, the choice of an appropriate model parameter is required for these SFs. Some studies have analyzed the impact of these parameter values on the performance of the best-known decomposition multi-objective evolutionary algorithm (MOEA/D). In this paper, we propose a strategy based on collaborative populations combining different SFs and model parameter values via an adaptive operator selection based on the multi-armed bandit technique. Our preliminary results give rise to some interesting observations regarding the way in which different SFs are combined and adapted during the evolutionary process of MOEA/D.
MOEA/D中不同尺度函数的协同与自适应策略
近年来,基于分解的多目标进化算法在解决多目标和多目标优化问题方面取得了很大的成功。在这些算法中,所采用的标量化函数(SFs)对其性能起着至关重要的作用。修正加权Chebyshev (MCHE)、惩罚边界交叉点(PBI)和增广成就标量函数(AASF)等方法对于收敛到真帕累托前沿和沿真帕累托前沿均匀分布的解都是非常有效的。然而,这些sf需要选择合适的模型参数。一些研究分析了这些参数值对最著名的分解多目标进化算法(MOEA/D)性能的影响。在本文中,我们提出了一种基于协作种群的策略,通过基于多臂强盗技术的自适应算子选择,将不同的SFs和模型参数值结合起来。在MOEA/D的演化过程中,不同的SFs是如何结合和适应的,我们的初步结果引起了一些有趣的观察。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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