Recent decades have witnessed remarkable advancements in multiobjective evolutionary algorithms (MOEAs) that have been adopted to solve various multiobjective optimization problems (MOPs). However, these progressively improved MOEAs have not necessarily been equipped with sophisticatedly scalable and learnable problem-solving strategies that are able to cope with new and grand challenges brought by the scaling-up MOPs with continuously increasing complexity or scale from diverse aspects, mainly including expensive function evaluations, many objectives, large-scale search space, time-varying environments, and multitask. Under different scenarios, it requires divergent thinking to design new powerful MOEAs for solving them effectively. In this context, research into learnable MOEAs that arm themselves with machine learning techniques for scaling-up MOPs has received extensive attention in the field of evolutionary computation. In this paper, we begin with a taxonomy of scalable MOPs and learnable MOEAs, followed by an analysis of the challenges that scaling up MOPs pose to traditional MOEAs. Then, we synthetically overview recent advances of learnable MOEAs in solving various scaling up MOPs, focusing primarily on three attractive and promising directions (i.e., learnable evolutionary discriminators for environmental selection, learnable evolutionary generators for reproduction, and learnable evolutionary transfer for sharing or reusing optimization experience between different problem domains). The insight into learnable MOEAs held throughout this paper is offered to the readers as a reference to the general track of the efforts in this field.
翻译:近几十年来,在为解决多种目标优化问题而采用的多目标进化算法(MOEAs)方面取得了显著进展;然而,这些逐步改进的MOEAs不一定具备精密、可扩展和可学习的解决问题战略,这些战略能够应对规模扩大的MOEAs带来的新挑战和巨大挑战,这些战略在演化计算领域得到了广泛关注;在本文件中,我们首先对规模扩大的MORS和可学习的MOEAs进行分类分析,然后分析规模扩大的MORSs对传统的MOEAs构成的挑战。在不同的情景下,我们需要不同的思维来设计新的强大的MOEA,以有效解决这些问题。在此背景下,研究能够学习的MOEAs,利用机械学习技术来扩大MOEAs,在进化计算领域,主要侧重于机械学习机械学习技术,在进化领域进行三个有吸引力和有希望的进化选择,然后是学习进化领域之间的进化和进化,在学习进化领域进行进化过程中,在学习进化和进化领域进行进化。