Domination-Based Ordinal Regression for Expensive Multi-Objective Optimization

Xunzhao Yu, X. Yao, Yan Wang, Ling Zhu, Dimitar Filev
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引用次数: 6

Abstract

Most surrogate-assisted evolutionary algorithms save expensive evaluations by approximating fitness functions. However, many real-world applications are high-dimensional multi-objective expensive optimization problems, and it is difficult to approximate their fitness functions accurately using a very limited number of fitness evaluations. This paper proposes a domination-based ordinal regression surrogate, in which a Kriging model is employed to learn the domination relationship values and to approximate the ordinal landscape of fitness functions. Coupling with a hybrid surrogate management strategy, the solutions with higher probabilities to dominate others are selected and evaluated in fitness functions. Our empirical studies on the DTLZ testing functions demonstrate that the proposed algorithm is more efficient when compared with other state-of-the-art expensive multi-objective optimization methods.
基于支配的有序回归的昂贵多目标优化
大多数代理辅助进化算法通过逼近适应度函数来节省昂贵的评估。然而,现实世界中的许多应用都是高维多目标昂贵的优化问题,使用非常有限的适应度评估很难准确地近似其适应度函数。本文提出了一种基于支配的有序回归代理,利用Kriging模型学习支配关系值,逼近适应度函数的有序格局。结合混合代理管理策略,选择具有较高支配概率的解决方案,并在适应度函数中进行评估。我们对DTLZ测试函数的实证研究表明,与其他最先进的昂贵的多目标优化方法相比,本文提出的算法效率更高。
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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