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A Multipopulation Evolutionary Algorithm for Solving Large-Scale Multimodal Multiobjective Optimization Problems

机译:一种求解大规模多模式多目标优化问题的多算法进化算法

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摘要

Multimodal multiobjective optimization problems (MMOPs) widely exist in real-world applications, which have multiple equivalent Pareto-optimal solutions that are similar in the objective space but totally different in the decision space. While some evolutionary algorithms (EAs) have been developed to find the equivalent Pareto-optimal solutions in recent years, they are ineffective to handle large-scale MMOPs having a large number of variables. This article thus proposes an EA for solving large-scale MMOPs with sparse Pareto-optimal solutions, i.e., most variables in the optimal solutions are 0. The proposed algorithm explores different regions of the decision space via multiple subpopulations and guides the search behavior of the subpopulations via adaptively updated guiding vectors. The guiding vector for each subpopulation not only provides efficient convergence in the huge search space but also differentiates its search direction from others to handle the multimodality. While most existing EAs solve MMOPs with 2-7 decision variables, the proposed algorithm is shown to be effective for benchmark MMOPs with up to 500 decision variables. Moreover, the proposed algorithm also produces a better result than state-of-the-art methods for the neural architecture search.
机译:多模式多目标优化问题(MMOPS)广泛存在于现实世界应用中,其具有多等同的帕累托最佳解决方案,其在客观空间中类似但在决策空间中完全不同。虽然已经开发出一些进化算法(EAS)近年来找到了相当于帕累托 - 最佳解决方案,但它们无效地处理具有大量变量的大规模MMOPS。因此,本文提出了用于求解具有稀疏Pareto-Optimal解决方案的大规模MMOPS的EA,即最佳解决方案中的大多数变量为0.所提出的算法通过多个子步骤探讨决策空间的不同区域,并指导搜索行为通过自适应更新的引导载体群体。每个亚群的引导载体不仅在庞大的搜索空间中提供有效的收敛,而且还将其搜索方向与其他亚的搜索方向区分开来处理多模。虽然大多数现有的EAS解决MMOPS具有2-7个决定变量,但该算法显示为基准MMOPS有效,最多500个决策变量。此外,所提出的算法还产生比神经结构搜索的最先进方法更好的结果。

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