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Multiobjective big data optimization based on a hybrid salp swarm algorithm and differential evolution

机译:基于混合salp swarm算法和差分进化的多目标大数据优化

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摘要

This paper developed a multiobjective Big Data optimization approach based on a hybrid salp swarm algorithm and the differential evolution algorithm. The role of the differential evolution algorithm is to enhance the capability of the feature exploitation of the salp swarm algorithm because the operators of the differential evolution algorithm are used as local search operators. In general, the proposed method contains three stages. In the first stage, the population is generated, and the archive is initialized. The second stage updates the solutions using the hybrid salp swarm algorithm and the differential evolution algorithm, and the final stage determines the nondominated solutions and updates the archive. To assess the performance of the proposed approach, a series of experiments were performed. A set of single-objective and multiobjective problems from the 2015 Big Data optimization competition were tested; the dataset contained data with and without noise. The results of our experiments illustrated that the proposed approach outperformed other approaches, including the baseline nondominated sorting genetic algorithm, on all test problems. Moreover, for single-objective problems, the score value of the proposed method was better than that of the traditional multiobjective salp swarm algorithm. When compared with both algorithms, that is, the adaptive DE algorithm with external archive and the hybrid multiobjective firefly algorithm, its score was the largest. In contrast, for the multiobjective functions, the scores of the proposed algorithm were higher than that of the fireworks algorithm framework.
机译:本文提出了一种基于混合salp swarm算法和差分进化算法的多目标大数据优化方法。差分进化算法的作用是增强Salp群算法的特征开发能力,因为差分进化算法的算子被用作局部搜索算子。通常,所提出的方法包括三个阶段。在第一阶段,生成总体,并初始化档案。第二阶段使用混合Salp群算法和差分进化算法更新解决方案,最后阶段确定非主导解决方案并更新档案。为了评估所提出方法的性能,进行了一系列实验。测试了2015年大数据优化竞赛中的一组单目标和多目标问题;数据集包含有噪声和无噪声的数据。我们的实验结果表明,该方法在所有测试问题上均优于其他方法,包括基线非支配排序遗传算法。此外,对于单目标问题,该方法的得分值优于传统的多目标salp群算法。与两种算法(即带有外部档案的自适应DE算法和混合多目标萤火虫算法)相比,其得分最高。相比之下,对于多目标函数,所提出算法的得分要高于烟火算法框架的得分。

著录项

  • 来源
    《Applied Mathematical Modelling》 |2020年第4期|929-943|共15页
  • 作者

  • 作者单位

    School of Computer Science and Technology Wuhan University of Technology PR China Department of Mathematics Faculty of Science Zagazig University Zagazig Egypt;

    School of Computer Science and Technology Wuhan University of Technology PR China;

    School of Computer Science and Technology Wuhan University of Technology PR China Department of Computing and Information System Sabaragamuwa University of Sri Lanka Sri Lanka;

  • 收录信息 美国《科学引文索引》(SCI);美国《工程索引》(EI);
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Big Data optimization problem; Multiobjective optimization problem; Metaheuristic techniques; Salp swarm algorithm; Differential evolution;

    机译:大数据优化问题;多目标优化问题;元启发式技术;Salp群算法;差异进化;

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