Model-Based Clustering Based on Variational Learning of Hierarchical Infinite Beta-Liouville Mixture Models
作者:Wentao Fan, Nizar Bouguila
摘要
In this work, we develop a statistical framework for data clustering which uses hierarchical Dirichlet processes and Beta-Liouville distributions. The parameters of this framework are leaned using two variational Bayes approaches. The first one considers batch settings and the second one takes into account the dynamic nature of real data. Experimental results based on a challenging problem namely visual scenes categorization demonstrate the merits of the proposed framework.
论文关键词:Mixture models, Beta-Liouville, Variational Bayes , Nonparametric Bayesian, Hierarchical Dirichlet process, Visual scenes categorization
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论文官网地址:https://doi.org/10.1007/s11063-015-9466-x