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A Dirichlet Process Mixture of Generalized Dirichlet Distributions for Proportional Data Modeling

机译:用于比例数据建模的广义Dirichlet分布的Dirichlet过程混合

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In this paper, we propose a clustering algorithm based on both Dirichlet processes and generalized Dirichlet distribution which has been shown to be very flexible for proportional data modeling. Our approach can be viewed as an extension of the finite generalized Dirichlet mixture model to the infinite case. The extension is based on nonparametric Bayesian analysis. This clustering algorithm does not require the specification of the number of mixture components to be given in advance and estimates it in a principled manner. Our approach is Bayesian and relies on the estimation of the posterior distribution of clusterings using Gibbs sampler. Through some applications involving real-data classification and image databases categorization using visual words, we show that clustering via infinite mixture models offers a more powerful and robust performance than classic finite mixtures.
机译:在本文中,我们提出了一种基于Dirichlet过程和广义Dirichlet分布的聚类算法,该算法已被证明对于比例数据建模非常灵活。我们的方法可以看作是将有限广义Dirichlet混合模型扩展为无穷大情况。该扩展基于非参数贝叶斯分析。该聚类算法不需要预先给出混合组分的数量的说明,而是以有原则的方式对其进行估算。我们的方法是贝叶斯方法,依赖于使用Gibbs采样器估算聚类的后验分布。通过一些涉及使用可视单词进行实数据分类和图像数据库分类的应用程序,我们证明了通过无限混合模型进行聚类提供的功能比经典的有限混合更为强大和强大。

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