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Unsupervised Feature and Model Selection for Generalized Dirichlet Mixture Models

机译:广义Dirichlet混合模型的无监督特征与模型选择。

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We present in this paper a new approach for unsupervised feature selection for non Gaussian data controlled by a finite mixture of generalized Dirichlet distributions. We model each feature by a mixture of two Beta distributions: one relevant and depends on component labels while the second distribution is uninformative for the clustering. The relevance of each feature is then quantified by the mixture weight associated to the relevant Beta distribution. Experiments in summarizing image collections have shown the merits of our approach.
机译:我们在本文中提出了一种新的方法,用于由广义Dirichlet分布的有限混合控制的非高斯数据的无监督特征选择。我们通过两种Beta分布的混合来对每个特征进行建模:一种是相关的并依赖于组件标签,而第二种分布对于聚类而言则无用。然后,通过与相关Beta分布相关的混合权重来量化每个特征的相关性。总结图像集合的实验表明了我们方法的优点。

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