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Online Data Clustering Using Variational Learning of a Hierarchical Dirichlet Process Mixture of Dirichlet Distributions

机译:使用Dirichlet分布的分层Dirichlet过程混合的变分学习进行在线数据聚类

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摘要

This paper proposes an online clustering approach based on both hierarchical Dirichlet processes and Dirichlet distributions. The deployment of hierarchical Dirichlet processes allows to resolve difficulties related to model selection thanks to its nonparametric nature that arises in the face of unknown number of mixture components. The consideration of the Dirichlet distribution is justified by its high flexibility for non-Gaussian data modeling as shown in several previous works. The resulting statistical model is learned using variational Bayes and is evaluated via a challenging application namely images clustering. The obtained results show the merits of the proposed statistical framework.
机译:本文提出了一种基于分层Dirichlet过程和Dirichlet分布的在线聚类方法。分层Dirichlet过程的部署可以解决与模型选择有关的困难,这是由于面对未知数量的混合组分而产生的非参数性质。 Dirichlet分布的考虑是由其对非高斯数据建模的高度灵活性所证明的,如先前的几项工作所示。使用变分贝叶斯学习所得的统计模型,并通过具有挑战性的应用(即图像聚类)对其进行评估。获得的结果表明了所提出的统计框架的优点。

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