Tibély Gergely, Kovanen Lauri, Karsai Márton, Kaski Kimmo, Kertész János, Saramäki Jari
Institute of Physics and HAS-BME Condensed Matter Group, BME, Budapest, Budafoki út 8., H-1111, Hungary.
Phys Rev E Stat Nonlin Soft Matter Phys. 2011 May;83(5 Pt 2):056125. doi: 10.1103/PhysRevE.83.056125. Epub 2011 May 31.
Community detection methods have so far been tested mostly on small empirical networks and on synthetic benchmarks. Much less is known about their performance on large real-world networks, which nonetheless are a significant target for application. We analyze the performance of three state-of-the-art community detection methods by using them to identify communities in a large social network constructed from mobile phone call records. We find that all methods detect communities that are meaningful in some respects but fall short in others, and that there often is a hierarchical relationship between communities detected by different methods. Our results suggest that community detection methods could be useful in studying the general mesoscale structure of networks, as opposed to only trying to identify dense structures.
到目前为止,社区检测方法大多是在小型经验网络和合成基准上进行测试的。对于它们在大型真实世界网络上的性能了解得要少得多,而大型真实世界网络却是重要的应用目标。我们通过使用三种最先进的社区检测方法来识别一个由手机通话记录构建的大型社交网络中的社区,从而分析它们的性能。我们发现,所有方法都能检测出在某些方面有意义但在其他方面存在不足的社区,并且不同方法检测出的社区之间往往存在层次关系。我们的结果表明,社区检测方法在研究网络的一般中尺度结构方面可能是有用的,而不仅仅是试图识别密集结构。