论文标题
从进化多目标优化中的大型候选解决方案集的基准测试子集选择
Benchmarking Subset Selection from Large Candidate Solution Sets in Evolutionary Multi-objective Optimization
论文作者
论文摘要
在进化的多目标优化(EMO)领域中,标准实践是将表情算法的最终人群作为输出。但是,已经表明,最终人口通常包括由前几代产生和丢弃的其他解决方案主导的解决方案。最近,已经提出了一个新的emo框架来解决此问题,通过存储档案中演变过程中生成的所有非主导的解决方案,并从存档中选择一部分解决方案作为输出。该框架中的关键组成部分是档案中的子集选择,该子集选择通常存储大量候选解决方案。但是,大多数有关子集选择的研究都集中在用于环境选择的小型候选解决方案集上。没有用于大规模子集选择的基准测试套件。本文旨在通过提出基准测试套件来填补这一研究空白,以从大型候选解决方案集中选择子集选择,并使用建议的测试套件比较一些代表性的方法。拟议的测试套件以及基准研究为研究人员提供了一个基线,供研究人员理解,使用,比较和开发Emo领域中的子集选择方法。
In the evolutionary multi-objective optimization (EMO) field, the standard practice is to present the final population of an EMO algorithm as the output. However, it has been shown that the final population often includes solutions which are dominated by other solutions generated and discarded in previous generations. Recently, a new EMO framework has been proposed to solve this issue by storing all the non-dominated solutions generated during the evolution in an archive and selecting a subset of solutions from the archive as the output. The key component in this framework is the subset selection from the archive which usually stores a large number of candidate solutions. However, most studies on subset selection focus on small candidate solution sets for environmental selection. There is no benchmark test suite for large-scale subset selection. This paper aims to fill this research gap by proposing a benchmark test suite for subset selection from large candidate solution sets, and comparing some representative methods using the proposed test suite. The proposed test suite together with the benchmarking studies provides a baseline for researchers to understand, use, compare, and develop subset selection methods in the EMO field.