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Modeling Temporal Activity Patterns in Dynamic Social Networks

机译:动态社会网络中的时间活动模式建模

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The focus of this work is on developing probabilistic models for temporal activity of users in social networks (e.g., posting and tweeting) by incorporating the social network influence as perceived by the user. Although prior work in this area has developed sophisticated models for user activity, these models either ignore social network influence completely or incorporate it in an implicit manner. We overcome the nontransparency of the network in the model at the individual scale by proposing a coupled hidden Markov model (HMM), where each user's activity evolves according to a Markov chain with a hidden state that is influenced by the collective activity of the friends of the user. We develop generalized Baum-Welch and Viterbi algorithms for parameter learning and state estimation for the proposed framework. We then validate the proposed model using a significant corpus of user activity on Twitter. Our numerical studies show that with sufficient observations to ensure accurate model learning, the proposed framework explains the observed data better than either a renewal process-based model or a conventional (uncoupled) HMM. We also demonstrate the utility of the proposed approach in predicting the time to the next tweet. Finally, clustering in the model parameter space is shown to result in distinct natural clusters of users characterized by the interaction dynamic between a user and his network.
机译:这项工作的重点是通过结合用户所感知的社交网络影响力,为社交网络中用户的时间活动(例如,发布和发推)开发概率模型。尽管该领域的先前工作已经开发了用于用户活动的复杂模型,但是这些模型要么完全忽略了社交网络的影响,要么以隐式方式将其合并。通过提出耦合隐马尔可夫模型(HMM),我们克服了模型在个体规模上网络的不透明性,在该模型中,每个用户的活动均根据具有隐性状态的Markov链演化,该隐性状态受Friend的朋友的集体活动影响用户。我们为提出的框架开发了用于参数学习和状态估计的广义Baum-Welch和Viterbi算法。然后,我们使用Twitter上大量的用户活动来验证提议的模型。我们的数值研究表明,通过足够的观察来确保准确的模型学习,与基于更新过程的模型或传统的(未耦合的)HMM相比,所提出的框架可以更好地解释观察到的数据。我们还演示了所建议方法在预测下一条鸣叫时间方面的实用性。最终,模型参数空间中的聚类被显示为以用户与他的网络之间的交互动态为特征的不同的自然用户聚类。

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