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Nested CRP with Hawkes-Gaussian Processes

机译:霍克斯-高斯过程的嵌套CRP

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There has been growing interest in learning social structure underlying interaction data, especially when such data consist of both temporal and textual information. In this paper, we propose a novel nonparametric Bayesian model that incorporates senders and receivers of messages into a hierarchical structure that governs the content and reciprocity of communications. We bring the nested Chinese restaurant process from nonparametric Bayesian statistics to Hawkes process models of point pattern data. By modeling senders and receivers in such a hierarchical framework, we are better able to make inferences about the authorship and audience of communications, as well as individual behavior such as favorite collaborators and top-pick words. Empirical results with our nonparametric Bayesian point process model show that our formulation has improved predictions about event times and clusters. In addition, the latent structure revealed by our model provides a useful qualitative understanding of the data, facilitating interesting exploratory analyses.
机译:对学习交互作用基础的社会结构的兴趣日益浓厚,尤其是当此类数据既包含时间信息又包含文本信息时。在本文中,我们提出了一种新颖的非参数贝叶斯模型,该模型将消息的发送者和接收者合并到控制通信内容和互惠性的分层结构中。我们将嵌套的中餐厅过程从非参数贝叶斯统计信息引入到点模式数据的Hawkes过程模型。通过在这样的层次结构框架中对发送者和接收者进行建模,我们可以更好地推断出通讯的作者和受众以及个人行为,例如喜欢的合作者和热门词汇。非参数贝叶斯点过程模型的经验结果表明,我们的公式对事件时间和聚类的预测有所改进。此外,我们的模型揭示的潜在结构对数据提供了有用的定性理解,有助于进行有趣的探索性分析。

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