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Exploring differential evolution and particle swarm optimization to develop some symmetry-based automatic clustering techniques: application to gene clustering

机译:探索差分演进和粒子群优化,以开发一些基于对称的自动聚类技术:在基因聚类的应用

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摘要

In the current paper, we have developed two bio-inspired fuzzy clustering algorithms by incorporating the optimization techniques, namely differential evolution and particle swarm optimization. Both these clustering techniques can detect symmetrical-shaped clusters utilizing the established point symmetry-based distance measure. Both the proposed approaches are automatic in nature and can detect the number of clusters automatically from a given dataset. A symmetry-based cluster validity measure, F-Sym-index, is used as the objective function to be optimized in order to automatically determine the correct partitioning by both the approaches. The effectiveness of the proposed approaches is shown for automatically clustering some artificial and real-life datasets as well as for clustering some real-life gene expression datasets. The current paper presents a comparative analysis of some meta-heuristic-based clustering approaches, namely newly proposed two techniques and the already existing automatic genetic clustering techniques, VGAPS, GCUK, HNGA. The obtained results are compared with respect to some external cluster validity indices. Moreover, some statistical significance tests, as well as biological significance tests, are also conducted. Finally, results on gene expression datasets have been visualized by using some visualization tools, namely Eisen plot and cluster profile plot.
机译:在目前的论文中,我们通过结合优化技术,即差分演进和粒子群优化开发了两个生物启发模糊聚类算法。这些聚类技术都可以利用所建立的基于点对称的距离测量来检测对称形簇。拟议方法都是自动的,可以从给定的数据集自动检测群集数。基于对称的群集有效度量F-Sym-index被用作要优化的目标函数,以便自动确定所有方法的正确分区。所提出方法的有效性显示用于自动聚类一些人工和现实生活数据集以及聚类一些现实生活基因表达数据集。本文介绍了一些基于元启发式的聚类方法的比较分析,即新提出的两种技术和已经存在的自动遗传聚类技术,VGAP,GCUK,HNGA。将获得的结果与一些外部集群有效性指数进行比较。此外,还进行了一些统计显着性测试以及生物意义测试。最后,通过使用一些可视化工具,即eisen绘图和集群轮廓图来可视化基因表达数据集的结果。

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