School of Physics and Optoelectronic Engineering, Xiangtan University, Xiangtan, Hunan, People's Republic of China.
School of Computer Science and Engineering, Central South University, Changsha, Hunan, People's Republic of China.
PLoS One. 2020 Mar 20;15(3):e0227244. doi: 10.1371/journal.pone.0227244. eCollection 2020.
Community detection in complex networks is an important issue in network science. Several statistical measures have been proposed and widely applied to detecting the communities in various complex networks. However, due to the lack of flexibility resolution, some of them have to encounter the resolution limit and thus are not compatible with multi-scale structures of complex networks. In this paper, we investigated a statistical measure of interest for community detection, Significance [Sci. Rep. 3 (2013) 2930], and analyzed its critical behaviors based on the theoretical derivation of critical number of communities and the phase diagram in community-partition transition. It was revealed that Significance exhibits far higher resolution than the traditional Modularity when the intra- and inter-link densities of communities are obviously different. Following the critical analysis, we developed a multi-resolution version of Significance for identifying communities in the multi-scale networks. Experimental tests in several typical networks have been performed and confirmed that the generalized Significance can be competent for the multi-scale communities detection. Moreover, it can effectively relax the first- and second-type resolution limits. Finally, we displayed an important potential application of the multi-scale Significance in computational biology: disease-gene identification, showing that extracting information from the perspective of multi-scale module mining is helpful for disease gene prediction.
复杂网络中的社区发现是网络科学中的一个重要问题。已经提出了几种统计度量标准,并广泛应用于检测各种复杂网络中的社区。然而,由于缺乏灵活性分辨率,其中一些标准必须遇到分辨率极限,因此与复杂网络的多尺度结构不兼容。在本文中,我们研究了一种用于社区检测的统计度量标准,即 Significance [Sci. Rep. 3 (2013) 2930],并基于社区划分转换中的临界社区数量和相图的理论推导分析了其临界行为。结果表明,当社区的内联和外联密度明显不同时,Significance 比传统的模块性具有更高的分辨率。在临界分析之后,我们开发了一种 Significance 的多分辨率版本,用于识别多尺度网络中的社区。在几个典型网络中的实验测试已经证实,广义的 Significance 可以胜任多尺度社区检测。此外,它可以有效地放宽第一和第二分辨率极限。最后,我们展示了多尺度 Significance 在计算生物学中的一个重要潜在应用:疾病基因识别,表明从多尺度模块挖掘的角度提取信息有助于疾病基因预测。