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An efficient estimation of distribution algorithm with rank-one modification and population reduction

机译:一种高速算法的分布算法和群体减少的分布算法

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摘要

As a type of model-based metaheuristic, estimation of distribution algorithms (EDAs) show certain advantages over other metaheuristics by using statistical learning method to estimate the distribution of promising solutions. However, the commonly-used Gaussian EDAs (GEDAs) usually suffer from premature convergence that severely limits their efficiency. In this paper, we first attempt to enhance the performance of GEDA by improving its model estimation method. The new estimation method shifts the weighted mean of high-quality solutions towards the fitness improvement direction and estimates the covariance matrix by taking the shifted mean as the center. Theoretical analyses show that the new covariance matrix is essentially a rank-one modification (R1M) of the original one. It could effectively adjust both the search scope and the search direction of GEDA, and thus improving the search efficiency. Furthermore, considering the importance of the population size tuning in GEDA, we develop a population reduction (PR) strategy which linearly reduces the population size throughout the evolution. By this means, the exploration and exploitation ability of GEDA could be balanced better in different search stages and a more proper utilization of limited computation resource can be achieved. Combining GEDA with the R1M and PR strategies, a novel EDA variant named EDA-R1M-PR is developed. The performance of EDA-R1M-PR was comprehensively evaluated and compared with that of several state-of-the-art evolutionary algorithms. Experimental results indicate that the R1M and PR strategies effectively enhance the global optimization ability of GEDA and the resultant EDA-R1M-PR significantly outperforms its competitors on a set of benchmark functions.
机译:作为一种基于模型的成分型,通过使用统计学习方法来估计有前途解决方案的分布,分布算法(EDAS)的估计显示出与其他半导体的某些优点。然而,普通使用的高斯EDAS(GEDAS)通常遭受过早的收敛,严重限制了它们的效率。在本文中,我们首先通过改善其模型估计方法来提高GEDA的性能。新的估计方法将高质量解决方案的加权平均值转换为健身改善方向,并通过将移位平均作为中心估计协方差矩阵。理论分析表明,新的协方差矩阵基本上是原始的等级 - 一个修改(R1M)。它可以有效地调整GEDA的搜索范围和搜索方向,从而提高搜索效率。此外,考虑到GEDA中人口规模调整的重要性,我们开发了一个人口减少(PR)战略,线性地降低了整个演变的人口大小。通过这种方式,GEDA的探索和开发能力可以在不同的搜索阶段中更好地平衡,并且可以实现更适当的利用有限计算资源。结合GEDA与R1M和PR策略,开发了一个名为EDA-R1M-PR的新型EDA变体。 EDA-R1M-PR的性能被全面评估,并与几种最先进的进化算法进行了比较。实验结果表明,R1M和PR战略有效提高了GEDA的全球优化能力,所得EDA-R1M-PR显着优于竞争对手的一组基准功能。

著录项

  • 来源
    《BioSystems 》 |2019年第2019期| 共13页
  • 作者单位

    Xi An Jiao Tong Univ Dept Automat Sci &

    Technol Sch Elect &

    Informat Engn 28 Xianning West Rd Xian 710049 Shaanxi Peoples R China;

    Xi An Jiao Tong Univ Dept Automat Sci &

    Technol Sch Elect &

    Informat Engn 28 Xianning West Rd Xian 710049 Shaanxi Peoples R China;

    Airworthiness Certificat Ctr CAAC Xian Aircraft Certificat Ctr Xian Shaanxi Peoples R China;

    Northwest Univ Sch Informat Sci &

    Technol Xian Shaanxi Peoples R China;

    Guangdong Xian Jiaotong Univ Acad Xian Shaanxi Peoples R China;

    Xi An Jiao Tong Univ Dept Automat Sci &

    Technol Sch Elect &

    Informat Engn 28 Xianning West Rd Xian 710049 Shaanxi Peoples R China;

    Xi An Jiao Tong Univ Dept Automat Sci &

    Technol Sch Elect &

    Informat Engn 28 Xianning West Rd Xian 710049 Shaanxi Peoples R China;

  • 收录信息
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 生物科学 ;
  • 关键词

    Estimation of distribution algorithms; Premature convergence; Rank-one modification; population reduction;

    机译:分布算法的估计;过早收敛;秩一修改;人口减少;

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