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An Infinite Mixture Model of Generalized Inverted Dirichlet Distributions for High-Dimensional Positive Data Modeling

机译:高维正数据建模的广义倒狄利克雷分布的无限混合模型

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We propose an infinite mixture model for the clustering of positive data. The proposed model is based on the generalized inverted Dirichlet distribution which has a more general covariance structure than the inverted Dirichlet that has been widely used recently in several machine learning and data mining applications. The proposed mixture is developed in an elegant way that allows simultaneous clustering and feature selection, and is learned using a fully Bayesian approach via Gibbs sampling. The merits of the proposed approach are demonstrated using a challenging application namely images categorization.
机译:我们为阳性数据的聚类提出了一个无限混合模型。所提出的模型基于广义逆Dirichlet分布,与最近已在几种机器学习和数据挖掘应用中广泛使用的逆Dirichlet相比,它具有更通用的协方差结构。提议的混合以一种优雅的方式开发,可以同时进行聚类和特征选择,并通过Gibbs采样使用完全贝叶斯方法进行学习。使用具有挑战性的应用(即图像分类)证明了所提出方法的优点。

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