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A new modularity measure for Fuzzy Community detection problems based on overlap and grouping functions

机译:基于重叠和分组函数的模糊社区检测问题的新模块化度量

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摘要

One of the main challenges of fuzzy community detection problems is to be able to measure the quality of a fuzzy partition. In this paper, we present an alternative way of measuring the quality of a fuzzy community detection output based on n-dimensional grouping and overlap functions. Moreover, the proposed modularity measure generalizes the classical Girvan Newman (GN) modularity for crisp community detection problems and also for crisp overlapping community detection problems. Therefore, it can be used to compare partitions of different nature (i.e. those composed of classical, overlapping and fuzzy communities). Particularly, as is usually done with the GN modularity, the proposed measure may be used to identify the optimal number of communities to be obtained by any network clustering algorithm in a given network. We illustrate this usage by adapting in this way a well-known algorithm for fuzzy community detection problems, extending it to also deal with overlapping community detection problems and produce a ranking of the overlapping nodes. Some computational experiments show the feasibility of the proposed approach to modularity measures through n-dimensional overlap and grouping functions. (C) 2016 Elsevier Inc. All rights reserved.
机译:模糊社区检测问题的主要挑战之一是能够测量模糊分区的质量。在本文中,我们提出了一种基于n维分组和重叠函数来测量模糊社区检测输出质量的替代方法。而且,提出的模块化度量将广义的Girvan Newman(GN)模块化推广到了清晰的社区检测问题以及清晰的重叠社区检测问题。因此,它可用于比较不同性质的分区(即由经典,重叠和模糊社区组成的分区)。尤其是,如通常使用GN模块化所做的那样,建议的措施可用于标识给定网络中通过任何网络聚类算法获得的最佳社区数量。我们通过以一种已知的模糊社区检测问题算法对这种用法进行了说明,将其扩展为还可以处理重叠社区检测问题并产生重叠节点的排名,从而说明了这种用法。一些计算实验表明,通过n维重叠和分组函数,该方法可用于模块化测量。 (C)2016 Elsevier Inc.保留所有权利。

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