NEAIJun 23, 2022

A Survey on Learnable Evolutionary Algorithms for Scalable Multiobjective Optimization

arXiv:2206.11526v4100 citationsh-index: 47
Originality Synthesis-oriented
AI Analysis

It provides a comprehensive overview for researchers in evolutionary computation, but it is incremental as it synthesizes existing work rather than introducing new methods.

This paper surveys learnable evolutionary algorithms that integrate machine learning to address scalability challenges in multiobjective optimization, such as expensive evaluations and large search spaces, by categorizing recent advances into four key directions.

Recent decades have witnessed great advancements in multiobjective evolutionary algorithms (MOEAs) for multiobjective optimization problems (MOPs). However, these progressively improved MOEAs have not necessarily been equipped with scalable and learnable problem-solving strategies for new and grand challenges brought by the scaling-up MOPs with continuously increasing complexity from diverse aspects, mainly including expensive cost of function evaluations, many objectives, large-scale search space, time-varying environments, and multi-task. Under different scenarios, divergent thinking is required in designing new powerful MOEAs for solving them effectively. In this context, research studies on learnable MOEAs with machine learning techniques have received extensive attention in the field of evolutionary computation. This paper begins with a general taxonomy of scaling-up MOPs and learnable MOEAs, followed by an analysis of the challenges that these MOPs pose to traditional MOEAs. Then, we synthetically overview recent advances of learnable MOEAs in solving various scaling-up MOPs, focusing primarily on four attractive directions (i.e., learnable evolutionary discriminators for environmental selection, learnable evolutionary generators for reproduction, learnable evolutionary evaluators for function evaluations, and learnable evolutionary transfer modules for sharing or reusing optimization experience). The insight of learnable MOEAs is offered to readers as a reference to the general track of the efforts in this field.

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