Most multi-objective optimisation algorithms maintain an archive explicitly or implicitly during their search. Such an archive can be solely used to store high-quality solutions presented to the decision maker, but in many cases may participate in the search process (e.g., as the population in evolutionary computation). Over the last two decades, archiving, the process of comparing new solutions with previous ones and deciding how to update the archive/population, stands as an important issue in evolutionary multi-objective optimisation (EMO). This is evidenced by constant efforts from the community on developing various effective archiving methods, ranging from conventional Pareto-based methods to more recent indicator-based and decomposition-based ones. However, the focus of these efforts is on empirical performance comparison in terms of specific quality indicators; there is lack of systematic study of archiving methods from a general theoretical perspective. In this paper, we attempt to conduct a systematic overview of multi-objective archiving, in the hope of paving the way to understand archiving algorithms from a holistic perspective of theory and practice, and more importantly providing a guidance on how to design theoretically desirable and practically useful archiving algorithms. In doing so, we also present that archiving algorithms based on weakly Pareto compliant indicators (e.g., epsilon-indicator), as long as designed properly, can achieve the same theoretical desirables as archivers based on Pareto compliant indicators (e.g., hypervolume indicator). Such desirables include the property limit-optimal, the limit form of the possible optimal property that a bounded archiving algorithm can have with respect to the most general form of superiority between solution sets.
翻译:大多数多目标优化算法在搜索过程中显式或隐式地维护归档。此类归档可以仅用于存储呈现给决策者的高质量解决方案,但在许多情况下可能参与搜索过程(例如作为进化计算中的种群)。在过去的二十年中,归档作为演化多目标优化(EMO)中一个重要问题,它指比较新解决方案与以前解决方案并决定如何更新归档/种群的过程。这得到了社区的不断努力,发展了各种有效的归档方法,从传统的基于帕累托方法到更近期的基于指标和分解方法。然而,这些努力的重点是在特定质量指标方面进行经验表现比较;缺乏对归档方法从一般理论视角进行系统研究。在本文中,我们尝试对多目标归档进行系统概述,希望从理论和实践的整体视角理解归档算法,并更重要的是提供指导,以设计理论上理想和实用的归档算法。在这样做的同时,我们还提出,基于弱帕累托兼容指标(例如ε指标)的归档算法,只要正确设计,就可以实现与基于帕累托兼容指标(例如超体积指标)的归档器相同的理论可取值。这样的可取值包括极限最优的性质,即有界归档算法与解集之间最一般优越性形式相关的可能最优的性质的极限形式。