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Continuous-Time User Modeling in Presence of Badges: A Probabilistic Approach

机译:徽章存在下的连续时间用户建模:一种概率方法

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摘要

User modeling plays an important role in delivering customized web services to the users and improving their engagement. However most user models in the literature do not explicitly consider the temporal behavior of users. More recently, continuous-time user modeling has gained considerable attention and many user behavior models have been proposed based on temporal point processes. However, typical point process-based models often considered the impact of peer influence and content on the user participation and neglected other factors. Gamification elements are among those factors that are neglected, while they have a strong impact on user participation in online services. In this article, we propose interdependent multi-dimensional temporal point processes that capture the impact of badges on user participation besides the peer influence and content factors. We extend the proposed processes to model user actions over the community-based question and answering websites, and propose an inference algorithm based on Variational-Expectation Maximization that can elliciently learn the model parameters. Extensive experiments on both synthetic and real data gathered from Stack Overflow show that our inference algorithm learns the parameters efficiently and the proposed method can better predict the user behavior compared to the alternatives.
机译:用户建模在向用户提供定制的Web服务并提高用户参与度方面发挥着重要作用。但是,文献中的大多数用户模型并未明确考虑用户的时间行为。最近,连续时间用户建模已引起相当大的关注,并且基于时间点过程提出了许多用户行为模型。但是,典型的基于点过程的模型通常考虑对等影响和内容对用户参与的影响,而忽略了其他因素。游戏化元素是被忽略的因素之一,尽管它们对用户参与在线服务有很大影响。在本文中,我们提出了相互依赖的多维时间点过程,该过程捕获了徽章对用户参与的影响以及同伴的影响和内容因素。我们扩展了提出的过程以对基于社区的问答网站上的用户行为进行建模,并提出了一种基于变分期望最大化的推理算法,该推理算法可以有效地学习模型参数。对从Stack Overflow收集的合成数据和实际数据进行的大量实验表明,我们的推理算法可以有效地学习参数,与其他方法相比,该方法可以更好地预测用户行为。

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