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Automatic clustering by elitism-based multi-objective differential evolution

机译:基于精英的多目标差分进化自动聚类

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To arrange the uncategorised and unlabelled data into different clusters and finding the actual label of each datum from the huge volume by extracting useful and unique information is a real challenge. In this article, an automatic clustering by elitism-based multi-objective differential evolution (AC-EMODE) algorithm has been proposed to deal with partitioning the data into different clusters. This work includes three objectives to handle complex datasets. This generates a suitable Pareto front by simultaneously optimising three objectives. In addition to that, a very effective concept is followed for getting the best solution from the optimal Pareto front. A comparative analysis of the proposed approach with another six population-based methods has been carried out. These techniques are applied to ten datasets and the results reveal that the proposed approach can be considered as one of the alternative powerful methods for all data clustering applications in various fields.
机译:将未分类和未标记的数据排列到不同的簇中,并通过提取有用且独特的信息来从大量数据中找到每个数据的实际标记是一个真正的挑战。本文提出了一种基于精英的多目标差分进化算法(AC-EMODE)的自动聚类算法,用于将数据划分为不同的聚类。这项工作包括处理复杂数据集的三个目标。通过同时优化三个目标,可以生成合适的帕累托前沿。除此之外,还遵循了一个非常有效的概念,可以从最佳的Pareto前端获得最佳的解决方案。对提议的方法与另外六种基于人群的方法进行了比较分析。这些技术被应用于十个数据集,结果表明,该方法可以看作是各个领域中所有数据聚类应用的替代强大方法之一。

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