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Is Normalized Mutual Information a Fair Measure for Comparing Community Detection Methods?

机译:是否正常化相互信息比较群落检测方法的公平措施?

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Normalized mutual information (NMI) is a widely used measure to compare community detection methods. Recently, however, the need of adjustment for information theoretic based measures has been argued because of their tendency in choosing clustering solutions with more communities. In this paper an experimental evaluation is performed to investigate this problem, and an adjustment that scales the values of NMI is proposed. Experiments on synthetic generated networks highlight the unbiased behavior of scaled NMI.
机译:标准化的互信息(NMI)是一种广泛使用的措施来比较社区检测方法。然而,最近,由于他们选择了更多社区的聚类解决方案的趋势,已经争论了对基于信息的措施进行调整的需要。在本文中,进行了实验评估以研究该问题,并提出了一种调整,其缩放NMI的值。合成生成网络的实验突出了缩放NMI的无偏见行为。

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