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Assessing the Performance of a Graph-Based Clustering Algorithm

机译:评估基于图的聚类算法的性能

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摘要

Graph-based clustering algorithms are particularly suited for dealing with data that do not come from a Gaussian or a spherical distribution. They can be used for detecting clusters of any size and shape without the need of specifying the actual number of clusters; moreover, they can be profitably used in cluster detection problems. In this paper, we propose a detailed performance evaluation of four different graph-based clustering approaches. Three of the algorithms selected for comparison have been chosen from the literature. While these algorithms do not require the setting of the number of clusters, they need, however, some parameters to be provided by the user. So, as the fourth algorithm under comparison, we propose in this paper an approach that overcomes this limitation, proving to be an effective solution in real applications where a completely unsupervised method is desirable.
机译:基于图的聚类算法特别适合处理非高斯分布或球形分布的数据。它们可用于检测任何大小和形状的簇,而无需指定簇的实际数量;而且,它们可以有效地用于聚类检测问题。在本文中,我们提出了四种不同的基于图的聚类方法的详细性能评估。从文献中选择了三种用于比较的算法。尽管这些算法不需要设置簇数,但是它们需要用户提供一些参数。因此,作为比较中的第四种算法,我们在本文中提出了一种克服此限制的方法,被证明是需要完全无监督方法的实际应用中的有效解决方案。

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