Palla Gergely, Barabási Albert-László, Vicsek Tamás
Statistical and Biological Physics Research Group of the HAS, Pázmány P. stny. 1A, H-1117 Budapest, Hungary.
Nature. 2007 Apr 5;446(7136):664-7. doi: 10.1038/nature05670.
The rich set of interactions between individuals in society results in complex community structure, capturing highly connected circles of friends, families or professional cliques in a social network. Thanks to frequent changes in the activity and communication patterns of individuals, the associated social and communication network is subject to constant evolution. Our knowledge of the mechanisms governing the underlying community dynamics is limited, but is essential for a deeper understanding of the development and self-optimization of society as a whole. We have developed an algorithm based on clique percolation that allows us to investigate the time dependence of overlapping communities on a large scale, and thus uncover basic relationships characterizing community evolution. Our focus is on networks capturing the collaboration between scientists and the calls between mobile phone users. We find that large groups persist for longer if they are capable of dynamically altering their membership, suggesting that an ability to change the group composition results in better adaptability. The behaviour of small groups displays the opposite tendency-the condition for stability is that their composition remains unchanged. We also show that knowledge of the time commitment of members to a given community can be used for estimating the community's lifetime. These findings offer insight into the fundamental differences between the dynamics of small groups and large institutions.
社会中个体之间丰富的互动关系导致了复杂的社区结构,在社交网络中体现为高度关联的朋友圈、家庭圈或职业团体。由于个体活动和交流模式的频繁变化,相关的社交和通信网络也在不断演变。我们对支配潜在社区动态的机制的了解有限,但这对于更深入地理解整个社会的发展和自我优化至关重要。我们开发了一种基于团簇渗流的算法,它使我们能够大规模研究重叠社区的时间依赖性,从而揭示表征社区演变的基本关系。我们关注的网络包括科学家之间的合作网络以及手机用户之间的通话网络。我们发现,如果大群体能够动态改变其成员构成,它们持续的时间会更长,这表明改变群体构成的能力会带来更好的适应性。小群体的行为则呈现相反的趋势——稳定的条件是其构成保持不变。我们还表明,了解成员对特定社区的投入时间可用于估计该社区的存续期。这些发现为深入了解小群体和大机构动态之间的根本差异提供了见解。