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An improved differential evolution algorithm using Archimedean spiral and neighborhood search based mutation approach for cluster analysis

机译:改进的基于阿基米德螺旋和邻域搜索的变异进化差异进化算法用于聚类分析

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This study proposes an improved Differential Evolution (DE) algorithm utilizing Archimedean Spiral, Mantegna Levy Distribution, and Neighborhood Search (NS). The proposed algorithm is denoted as Adaptive Differential Evolution with Neighborhood Search (ADENS). The aim of the ADENS algorithm is to enhance the convergence speed and keeping a balance between exploration and exploitation of the DE algorithm. It uses a new mutation strategy to generate robust solutions by combining the Archimedean Spiral (AS) with the Mantegna Levy flight. In order to enhance the efficiency of ADENS, a replacement method combines Levy flight with neighborhood search to generate solutions that replace poorly performing ones. A self-adaptive strategy is applied to fine-tune one of the control parameters of DE and an initialization method is employed to initialize the algorithm. These strategies help the algorithm achieve good efficiency in terms of convergence speed and both local and global search. The performance is evaluated using twelve well-known standard data sets to show the algorithms superior performance, confirmed to be statistically significant. In order to test the proposed approach statistically, this paper applied Wilcoxon ranked sum test as well as Friedman test. Our results also shed light on the comparative performance of some recently published clustering heuristics. The results show that the algorithm is a robust algorithm and has a great superiority with respect to the employed algorithms. The proposed algorithm can be applied in different applications such as medical diagnosis and image segmentation according to the conducted experiments. (C) 2019 Elsevier B.V. All rights reserved.
机译:这项研究提出了一种改进的差分进化(DE)算法,该算法利用了Archimedean螺旋,Mantegna Levy分布和邻域搜索(NS)。所提出的算法表示为带有邻域搜索的自适应差分进化(ADENS)。 ADENS算法的目的是提高收敛速度,并在DE算法的探索和开发之间保持平衡。它通过结合阿基米德螺旋(AS)和Mantegna Levy飞行,使用一种新的变异策略来生成可靠的解决方案。为了提高ADENS的效率,一种替代方法将Levy航班与邻域搜索相结合以生成替代性能不佳的解决方案。应用自适应策略对DE的控制参数之一进行微调,并采用初始化方法对算法进行初始化。这些策略有助于算法在收敛速度以及局部和全局搜索方面均达到良好的效率。使用十二个众所周知的标准数据集对性能进行了评估,以显示算法具有优越的性能,并被确认具有统计学意义。为了对所提出的方法进行统计检验,本文采用了Wilcoxon秩和检验和Friedman检验。我们的结果也揭示了一些最近发布的聚类启发式算法的比较性能。结果表明,该算法是一种鲁棒算法,相对于所采用的算法具有很大的优越性。根据所进行的实验,所提出的算法可以应用于不同的应用,例如医学诊断和图像分割。 (C)2019 Elsevier B.V.保留所有权利。

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