Institute of Computing Technology, Chinese Academy of Sciences, Beijing, China.
PLoS One. 2013 Oct 1;8(10):e76027. doi: 10.1371/journal.pone.0076027. eCollection 2013.
Cumulative effect in social contagion underlies many studies on the spread of innovation, behavior, and influence. However, few large-scale empirical studies are conducted to validate the existence of cumulative effect in information diffusion on social networks. In this paper, using the population-scale dataset from the largest Chinese microblogging website, we conduct a comprehensive study on the cumulative effect in information diffusion. We base our study on the diffusion network of message, where nodes are the involved users and links characterize forwarding relationship among them. We find that multiple exposures to the same message indeed increase the possibility of forwarding it. However, additional exposures cannot further improve the chance of forwarding when the number of exposures crosses its peak at two. This finding questions the cumulative effect hypothesis in information diffusion. Furthermore, to clarify the forwarding preference among users, we investigate both structural motif in the diffusion network and temporal pattern in information diffusion process. Findings provide some insights for understanding the variation of message popularity and explain the characteristics of diffusion network.
在创新、行为和影响的传播研究中,社会传播的累积效应是一个基础概念。然而,很少有大规模的实证研究来验证网络信息传播中累积效应的存在。本文使用来自中国最大的微博网站的人口规模数据集,对信息传播中的累积效应进行了全面研究。我们的研究基于消息的扩散网络,其中节点是涉及的用户,链接则表示他们之间的转发关系。我们发现,多次接触相同的消息确实会增加转发的可能性。然而,当接触次数超过两次的峰值时,额外的接触并不能进一步提高转发的机会。这一发现对信息传播中的累积效应假说提出了质疑。此外,为了澄清用户之间的转发偏好,我们还研究了扩散网络中的结构模式和信息传播过程中的时间模式。研究结果为理解消息流行度的变化提供了一些启示,并解释了扩散网络的特征。