通过潜在类对关系事件建模

Christopher DuBois, Padhraic Smyth
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引用次数: 33

摘要

许多社会网络的特点是个体之间的一系列二元互动。分析这类事件的技术日益引起人们的兴趣。在本文中,我们描述了二元事件的生成模型,其中每个事件来自C个潜在类中的一个,事件的属性(发送者,接收者和类型)是从这些实体的分布中选择的,这些分布取决于所选的类。我们提出了两种对该模型进行推理的算法:期望最大化算法和基于崩溃吉布斯抽样的马尔可夫链蒙特卡罗过程。为了分析模型的预测准确性,算法被应用于多个真实世界的数据集,包括电子邮件通信、国际政治事件和动物行为数据。
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Modeling relational events via latent classes
Many social networks can be characterized by a sequence of dyadic interactions between individuals. Techniques for analyzing such events are of increasing interest. In this paper, we describe a generative model for dyadic events, where each event arises from one of C latent classes, and the properties of the event (sender, recipient, and type) are chosen from distributions over these entities conditioned on the chosen class. We present two algorithms for inference in this model: an expectation-maximization algorithm as well as a Markov chain Monte Carlo procedure based on collapsed Gibbs sampling. To analyze the model's predictive accuracy, the algorithms are applied to multiple real-world data sets involving email communication, international political events, and animal behavior data.
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