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Large-Scale Experimental Evaluation of Cluster Representations for Multiobjective Evolutionary Clustering

机译:多目标进化聚类的聚类表示的大规模实验评估

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Multiobjective evolutionary clustering algorithms are based on the optimization of several objective functions that guide the search following a cycle based on evolutionary algorithms. Their capabilities allow them to find better solutions than with conventional clustering algorithms if the suitable individual representation is selected. This paper provides a detailed analysis of the three most relevant and useful representations—prototype-based, label-based, and graph-based—through a wide set of synthetic data sets. Moreover, they are also compared to relevant conventional clustering algorithms. Experiments show that multiobjective evolutionary clustering is competitive with regard to other clustering algorithms. Furthermore, the best scenario for each representation is also presented.
机译:多目标进化聚类算法基于几个目标函数的优化,这些目标函数基于进化算法在一个循环之后指导搜索。如果选择了合适的个体表示,它们的功能使他们可以找到比传统聚类算法更好的解决方案。本文通过广泛的综合数据集,对三种最相关和最有用的表示形式进行了详细分析,这些表示形式是基于原型的,基于标签的和基于图形的。此外,还将它们与相关的常规聚类算法进行比较。实验表明,多目标进化聚类相对于其他聚类算法具有竞争力。此外,还介绍了每种表示形式的最佳方案。

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