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Predicting Aggregate Social Activities using Continuous-Time Stochastic Process

机译:使用连续时间随机过程预测社会活动总量

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How to accurately model and predict the future status of social networks has become an important problem in recent years. Conventional solutions to such a problem often employ topological structure of the sociogram, i.e., friendship links. However, they often disregard different levels of activeness of social actors and become insufficient to deal with complex dynamics of user behaviors. In this paper, to address this issue, we first refine the notion of social activity to better describe dynamic user behaviors in social networks. We then propose a Parameterized Social Activity Model (PSAM) using continuous-time stochastic process for predicting aggregate social activities. With social activities evolving over time, PSAM itself also evolves and therefore dynamically captures the real-time characteristics of the current active population. Our experiments using two real social networks (Facebook and CiteSeer) reveal that the proposed PSAM model is effective in simulating social activity evolution and predicting aggregate social activities accurately at different time scales.
机译:近年来,如何准确地建模和预测社交网络的未来状态已成为一个重要的问题。解决该问题的常规方法通常采用社会图的拓扑结构,即友谊链接。但是,他们常常无视社交参与者的活跃程度,因而不足以应对用户行为的复杂动态。在本文中,为了解决这个问题,我们首先完善社交活动的概念,以更好地描述社交网络中的动态用户行为。然后,我们提出了一种使用连续时间随机过程来预测社会活动总量的参数化社会活动模型(PSAM)。随着社会活动的发展,PSAM本身也在发展,因此可以动态捕获当前活跃人口的实时特征。我们使用两个真实的社交网络(Facebook和CiteSeer)进行的实验表明,提出的PSAM模型可有效模拟社交活动的演变并准确预测不同时间范围内的总体社交活动。

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