在线社交网络中群体增长的模式和建模

J. Niu, Shaluo Huang, Milica Stojmenovic
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摘要

我们通过分析豆瓣网络中6个不同的用户群体(总共200万用户)来调查在线社交网络中的群体增长。豆瓣数据集中帖子的大小和寿命分别表现为指数截断和重尾的幂律分布。用户交互频率遵循两阶段幂律分布,可以区分不同类型的用户。在给定的同一时间段内,每一组的用户数量和用户产生的帖子/回复数量的增长在初始阶段遵循指数模式,在其余过程中急剧振荡。在一段时间内,发帖/回复的数量与活跃用户的数量呈幂律关系。我们提出了一个实证增长模型,扭曲增长(TG),来描述用户数量和他们生成的内容数量之间的关系。该模型根据历史数据推导方程来确定系数,并假设一个群组中的内容会吸引新用户加入,从而导致用户的增长。此外,新用户将与原始用户一起创造新的内容。我们通过理论分析和实际数据集的模拟验证了我们的TG模型。
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Patterns and modeling of group growth in online social networks
We investigate the group growth in online social networks, by analyzing six different user groups (two million users in total) in Douban Network. The size and longevity of posts in the Douban dataset demonstrate a power-law distribution with exponential cutoff and heavy tail, respectively. The frequency of user interactions follows a two-stage power-law distribution, which can distinguish different types of users. The growth of the number of users and the number of posts/replies generated by the users in a given and same time period, in each group, follow an exponential pattern at the initial stage and oscillate dramatically during the rest of the processes. The number of posts/replies has a power-law relation with the number of active users within a period of time. We propose an empirical growth model, Twisted Growth (TG), to portray the relation between the number of users and the amount of the contents they generated. The model derives equations based on the historical data for deciding coefficients, and the assumtion that the contents in one group will attract new users to join, which will lead to growth of users. Further, the newcomers together with original users will create new contents. We validate our TG model through theoretical analysis and simulations over real datasets.
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