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首页> 外文期刊>Physica, A. Statistical mechanics and its applications >Modeling the heterogeneity of human dynamics based on the measurements of influential users in Sina Microblog
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Modeling the heterogeneity of human dynamics based on the measurements of influential users in Sina Microblog

机译:基于新浪微博中有影响力用户的测量,对人类动力学的异质性进行建模

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Online social network has become an indispensable communication tool in the information age. The development of microblog also provides us a great opportunity to study human dynamics that play a crucial role in the design of efficient communication systems. In this paper we study the characteristics of the tweeting behavior based on the data collected from Sina Microblog. The user activity level is measured to characterize how often a user posts a tweet. We find that the user activity level follows a bimodal distribution. That is, the microblog users tend to be either active or inactive. The inter-tweeting time distribution is then measured at both the aggregate and individual levels. We find that the inter-tweeting time follows a piecewise power law distribution of two tails. Furthermore, the exponents of the two tails have different correlations with the user activity level. These findings demonstrate that the dynamics of the tweeting behavior are heterogeneous in different time scales. We then develop a dynamic model co-driven by the memory and the interest mechanism to characterize the heterogeneity. The numerical simulations validate the model and verify that the short time interval tweeting behavior is driven by the memory mechanism while the long time interval behavior by the interest mechanism. (C) 2015 Elsevier B.V. All rights reserved.
机译:在线社交网络已成为信息时代必不可少的交流工具。微博的发展也为我们提供了一个很好的机会来研究人类动力学,这些动力学在高效通信系统的设计中起着至关重要的作用。在本文中,我们根据从新浪微博收集到的数据研究了推文行为的特征。测量用户活动级别以表征用户发布推文的频率。我们发现用户活动级别遵循双峰分布。也就是说,微博用户倾向于活跃或不活跃。然后,在汇总级别和单个级别上都测量发布时间之间的时间分布。我们发现发推时间遵循两条尾巴的分段幂律分布。此外,两条尾巴的指数与用户活动水平具有不同的相关性。这些发现表明,在不同的时间尺度上,发推行为的动力学是异质的。然后,我们开发由内存和兴趣机制共同驱动的动态模型,以表征异质性。数值仿真验证了该模型,并验证了短时间间隔的鸣叫行为是由存储机制驱动的,而长时间间隔的鸣叫行为是由兴趣机制驱动的。 (C)2015 Elsevier B.V.保留所有权利。

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