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A Framework for Incorporating Trade-Off Information Using Multi-Objective Evolutionary Algorithms

机译:使用多目标进化算法整合权衡信息的框架

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Since their inception, multi-objective evolutionary algorithms have been adequately applied in finding a diverse approximation of efficient fronts of multi-objective optimization problems. In contrast, if we look at the rich history of classical multi-objective algorithms, we find that incorporation of user preferences has always been a major thrust of research. In this paper, we provide a general structure for incorporating preference information using multi-objective evolutionary algorithms. This is done in an NSGA-II scheme and by considering trade-off based preferences that come from so called proper Pareto-optimal solutions. We argue that finding proper Pareto-optimal solutions requires a set to compare with and hence, population based approaches should be a natural choice. Moreover, we suggest some practical modifications to the classical notion of proper Pareto-optimality. Computational studies on a number of test problems of varying complexity demonstrate the efficiency of multi-objective evolutionary algorithms in finding the complete preferred region for a large class of complex problems. We also discuss a theoretical justification for our NSGA-II based framework.
机译:自从它们诞生以来,多目标进化算法已被充分地应用于寻找多目标优化问题的有效前沿的多种近似。相反,如果我们回顾经典的多目标算法的丰富历史,就会发现结合用户偏好一直是研究的主要方向。在本文中,我们提供了使用多目标进化算法合并偏好信息的一般结构。这是在NSGA-II方案中完成的,并考虑了基于折衷的偏好,这些偏好来自所谓的适当的帕累托最优解。我们认为,找到合适的帕累托最优解需要一组与之比较的方法,因此,基于人口的方法应该是自然的选择。此外,我们建议对适当的帕累托最优性的经典概念进行一些实际的修改。对许多复杂度不同的测试问题的计算研究表明,多目标进化算法可以为一大类复杂问题找到完整的首选区域。我们还将讨论基于NSGA-II的框架的理论依据。

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