Double archive Pareto local search

O. Maler, Abhinav Srivastav
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引用次数: 3

Abstract

Many real-world problems have multiple, conflicting objectives and a large complex solution space. The conflicting objectives give rise to a set of non-dominating solutions, known as the Pareto front. In the absence of any prior information on the relative importance of the objectives, none of these solutions can be said to be better than others, and they should all be presented to the decision maker as alternatives. In most cases, the number of Pareto solutions can be huge and we would like to provide a good representative approximation of the Pareto front. Moreover, the search space can be too large and complex for the problem to be solved by exact methods. Therefore efficient heuristic search algorithms are needed that can handle such problems. In this paper, we propose a double archive based Pareto local search. The two archives of our algorithm are used to maintain (i) the current set of non-dominated solutions, and (ii) the set of promising candidate solutions whose neighbors have not been explored yet. Our selection criteria is based on choosing the candidate solutions from the second archive. This method improves upon the existing Pareto local search and queued Pareto local search methods for bi-objective and tri-objective quadratic assignment problem.
双重档案帕累托本地搜索
许多现实世界的问题都有多个相互冲突的目标和一个大而复杂的解决方案空间。相互冲突的目标产生了一组非支配性的解决方案,称为帕累托前线。在没有关于目标的相对重要性的任何事先信息的情况下,这些解决方案都不能说是比其他解决方案更好,它们都应该作为备选方案提交给决策者。在大多数情况下,帕累托解的数量可能是巨大的,我们希望提供一个很好的帕累托前沿的代表性近似。此外,搜索空间可能太大、太复杂,无法用精确的方法解决问题。因此,需要有效的启发式搜索算法来处理这类问题。本文提出了一种基于双档案的Pareto局部搜索方法。我们算法的两个存档用于维护(i)当前的非支配解集,以及(ii)邻居尚未被探索的有希望的候选解集。我们的选择标准是基于从第二个存档中选择候选解决方案。该方法对已有的双目标和三目标二次分配问题的Pareto局部搜索和排队Pareto局部搜索方法进行了改进。
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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