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Axially Symmetric Data Clustering Through Dirichlet Process Mixture Models of Watson Distributions

机译:通过Dirichlet Process混合模型的Watson分布轴对称数据聚类

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This paper proposes a Bayesian nonparametric framework for clustering axially symmetric data. Our approach is based on a Dirichlet processes mixture model with Watson distributions, which can also be considered as the infinite Watson mixture model. In this paper, first, we extend the finite Watson mixture model into its infinite counterpart based on the framework of truncated Dirichlet process mixture model with a stick-breaking representation. Second, we propose a coordinate ascent mean-field variational inference algorithm that can effectively learn the parameters of our model with closed-form solutions; Third, to cope with a massive data set, we develop a stochastic variational inference algorithm to learn the proposed model through the method of stochastic gradient ascent; Finally, the proposed nonparametric Bayesian model is evaluated through simulated axially symmetric data sets and a real-world application, namely, gene expression data clustering.
机译:本文提出了一种用于综合对称数据的贝叶斯非参数框架。我们的方法基于Dirichlet方法与Watson分布的混合模型,也可以被认为是无限的Watson混合模型。在本文中,首先,基于具有粘性表示的截断的Dirichlet工艺混合物模型的框架将有限的Watson混合模型扩展到其无限对应物中。其次,我们提出了一种坐标上升均值场变分的推理算法,可以有效地学习模型的闭合解决方案的参数;第三,要应对大规模的数据集,我们开发了一种随机变分推理算法,通过随机梯度上升的方法来学习所提出的模型;最后,通过模拟轴对称数据集和实际应用,即基因表达数据聚类来评估所提出的非参数贝叶斯模型。

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