Department of Modern Physics, University of Science and Technology of China, Hefei, 230026, China.
CAS key laboratory of theoretical physics, Institute of Theoretical Physics, Chinese Academy of Sciences, Beijing, 100190, China.
Sci Rep. 2017 Jul 13;7(1):5269. doi: 10.1038/s41598-017-05585-6.
By defining a new measure to community structure, exclusive modularity, and based on cavity method of statistical physics, we develop a mathematically principled method to determine the completeness of community structure, which represents whether a partition that is either annotated by experts or given by a community-detection algorithm, carries complete information about community structure in the network. Our results demonstrate that the expert partition is surprisingly incomplete in some networks such as the famous political blogs network, indicating that the relation between meta-data and community structure in real-world networks needs to be re-examined. As a byproduct we find that the exclusive modularity, which introduces a null model based on the degree-corrected stochastic block model, is of independent interest. We discuss its applications as principled ways of detecting hidden structures, finding hierarchical structures without removing edges, and obtaining low-dimensional embedding of networks.
通过定义一个新的社区结构度量方法——独占模体,并且基于统计物理的腔方法,我们开发了一种数学原理上的方法来确定社区结构的完整性,它代表了一个由专家注释或由社区检测算法给出的划分是否包含网络中社区结构的完整信息。我们的结果表明,在一些网络中,专家划分是惊人的不完整的,例如著名的政治博客网络,这表明在现实网络中,元数据和社区结构之间的关系需要重新审视。作为副产品,我们发现独占模体,它基于修正后的度随机块模型引入了一个零模型,具有独立的研究价值。我们讨论了它的应用,作为发现隐藏结构、找到无边缘去除的层次结构以及获得网络低维嵌入的原则性方法。