评价聚类算法的基准图

Lefteris Moussiades, A. Vakali
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引用次数: 7

摘要

人工图通常用于评价社区挖掘和聚类算法。每个人工图被分配一个预先指定的聚类,并将其与被评价算法得到的聚类解进行比较。因此,预先指定的聚类应该符合定义良好聚类的规范。然而,现有的人工图的构建过程并没有为预先指定的聚类设置明确的规范。我们称这些图为随机聚类图。在这里,我们引入了一类新的基准图,它根据明确的规范聚类。我们称之为最优聚类图。我们提出了最优聚类图的基本性质,并提出了最优聚类图的构造算法。实验上,我们比较了两种使用随机和最佳聚类图的社区挖掘算法。这个评估的结果揭示了算法和人工图的有趣见解。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Benchmark graphs for the evaluation of clustering algorithms
Artificial graphs are commonly used for the evaluation of community mining and clustering algorithms. Each artificial graph is assigned a pre-specified clustering, which is compared to clustering solutions obtained by the algorithms under evaluation. Hence, the pre-specified clustering should comply with specifications that are assumed to delimit a good clustering. However, existing construction processes for artificial graphs do not set explicit specifications for the pre-specified clustering. We call these graphs, randomly clustered graphs. Here, we introduce a new class of benchmark graphs which are clustered according to explicit specifications. We call them optimally clustered graphs. We present the basic properties of optimally clustered graphs and propose algorithms for their construction. Experimentally, we compare two community mining algorithms using both randomly and optimally clustered graphs. Results of this evaluation reveal interesting insights both for the algorithms and the artificial graphs.
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