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Non-Gaussian Data Clustering via Expectation Propagation Learning of Finite Dirichlet Mixture Models and Applications

机译:通过有限Dirichlet混合模型的期望传播学习进行非高斯数据聚类

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摘要

Learning appropriate statistical models is a fundamental data analysis task which has been the topic of continuing interest. Recently, finite Dirichlet mixture models have proved to be an effective and flexible model learning technique in several machine learning and data mining applications. In this article, the problem of learning and selecting finite Dirichlet mixture models is addressed using an expectation propagation (EP) inference framework. Within the proposed EP learning method, for finite mixture models, all the involved parameters and the model complexity (i.e. the number of mixture components), can be evaluated simultaneously in a single optimization framework. Extensive simulations using synthetic data along with two challenging real-world applications involving automatic image annotation and human action videos categorization demonstrate that our approach is able to achieve better results than comparable techniques.
机译:学习适当的统计模型是一项基本的数据分析任务,一直是人们持续关注的话题。最近,在多种机器学习和数据挖掘应用中,有限Dirichlet混合模型已被证明是一种有效且灵活的模型学习技术。在本文中,使用期望传播(EP)推理框架解决了学习和选择有限Dirichlet混合模型的问题。在提出的EP学习方法中,对于有限的混合模型,可以在单个优化框架中同时评估所有涉及的参数和模型复杂性(即混合成分的数量)。使用合成数据以及两个具有挑战性的实际应用(包括自动图像注释和人类动作视频分类)进行的广泛模拟表明,与同类技术相比,我们的方法能够实现更好的结果。

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