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Evolutionary Approach to Multiparty Multiobjective Optimization Problems with Common Pareto Optimal Solutions

机译:具有公共帕累托最优解的多方多目标优化问题的进化方法

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Some real-world optimization problems involve multiple decision makers holding different positions, each of whom has multiple conflicting objectives. These problems are defined as multiparty multiobjective optimization problems (MPMOPs). Although evolutionary multiobjective optimization has been widely studied for many years, little attention has been paid to multiparty multiobjective optimization in the field of evolutionary computation. In this paper, a class of MPMOPs, that is, MPMOPs having common Pareto optimal solutions, is addressed. A benchmark for MPMOPs, obtained by modifying an existing dynamic multiobjective optimization benchmark, is provided, and a multiparty multiobjective evolutionary algorithm to find the common Pareto optimal set is proposed. The results of experiments conducted using the benchmark show that the proposed multiparty multiobjective evolutionary algorithm is effective.
机译:一些现实世界优化问题涉及多个决策者持有不同的位置,每个决策者都有多种冲突的目标。这些问题被定义为多重标注优化问题(MPMOPS)。虽然进化多目标优化已被广泛研究多年,但在进化计算领域的多级多目标优化时,已经注意到了很少的关注。在本文中,解决了一类MPMOPS,即具有公共帕累托最佳解决方案的MPMOPS。提供了通过修改现有的动态多目标优化基准测试获得的MPMOPS的基准,以及提出了用于找到公共帕累托最优集的多群多目标进化算法。使用基准进行的实验结果表明,所提出的多群多目标进化算法是有效的。

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