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Modeling relational events via latent classes
Author(s) -
Christopher DuBois,
Padhraic Smyth
Publication year - 2010
Publication title -
citeseer x (the pennsylvania state university)
Language(s) - English
Resource type - Conference proceedings
DOI - 10.1145/1835804.1835906
Subject(s) - computer science , gibbs sampling , inference , event (particle physics) , markov chain monte carlo , communication source , generative model , hidden markov model , artificial intelligence , markov chain , class (philosophy) , machine learning , sequence (biology) , data mining , generative grammar , theoretical computer science , biology , telecommunications , bayesian probability , physics , quantum mechanics , genetics
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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