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Augment-and-Conquer Negative Binomial Processes

机译:增强征服负二项式过程

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By developing data augmentation methods unique to the negative binomial (NB) distribution, we unite seemingly disjoint count and mixture models under the NB process framework. We develop fundamental properties of the models and derive efficient Gibbs sampling inference. We show that the gamma-NB process can be reduced to the hierarchical Dirichlet process with normalization, highlighting its unique theoretical, structural and computational advantages. A variety of NB processes with distinct sharing mechanisms are constructed and applied to topic modeling, with connections to existing algorithms, showing the importance of inferring both the NB dispersion and probability parameters.
机译:通过开发负二项式(NB)分布特有的数据增强方法,我们在NB处理框架下联合了看似不相交的计数和混合模型。我们开发模型的基本属性,并得出有效的吉布斯采样推断。我们表明,γ-NB过程可以归一化为分层Dirichlet过程,突出了其独特的理论,结构和计算优势。通过与现有算法的连接,构造了具有不同共享机制的各种NB过程并将其应用于主题建模,这表明了推断NB离散度和概率参数的重要性。

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