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Negative Binomial Process Count and Mixture Modeling

机译:负二项式过程计数和混合模型

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摘要

The seemingly disjoint problems of count and mixture modeling are united under the negative binomial (NB) process. A gamma process is employed to model the rate measure of a Poisson process, whose normalization provides a random probability measure for mixture modeling and whose marginalization leads to an NB process for count modeling. A draw from the NB process consists of a Poisson distributed finite number of distinct atoms, each of which is associated with a logarithmic distributed number of data samples. We reveal relationships between various count- and mixture-modeling distributions and construct a Poisson-logarithmic bivariate distribution that connects the NB and Chinese restaurant table distributions. Fundamental properties of the models are developed, and we derive efficient Bayesian inference. It is shown that with augmentation and normalization, the NB process and gamma-NB process can be reduced to the Dirichlet process and hierarchical Dirichlet process, respectively. These relationships highlight theoretical, structural, and computational advantages of the NB process. A variety of NB processes, including the beta-geometric, beta-NB, marked-beta-NB, marked-gamma-NB and zero-inflated-NB processes, with distinct sharing mechanisms, are also constructed. These models are applied to topic modeling, with connections made to existing algorithms under Poisson factor analysis. Example results show the importance of inferring both the NB dispersion and probability parameters.
机译:在负二项式(NB)流程下,计数和混合模型看似不相交的问题结合在一起。伽马过程用于对泊松过程的速率度量进行建模,泊松过程的归一化为混合模型提供了随机概率度量,其边际化导致了用于计数模型的NB过程。 NB过程的结果包括泊松分布的有限数量的不同原子,每个原子都与对数分布的数据样本数量相关。我们揭示了各种计数模型和混合物模型分布之间的关系,并构建了将NB和中国饭店餐桌分布联系起来的Poisson对数二元分布。模型的基本特性得到了发展,我们得出了有效的贝叶斯推断。结果表明,通过增强和归一化,可以将NB过程和gamma-NB过程分别简化为Dirichlet过程和分层Dirichlet过程。这些关系凸显了NB工艺的理论,结构和计算优势。还构建了具有不同共享机制的各种NB过程,包括β-几何,β-NB,标记-β-NB,标记-γ-NB和零膨胀NB过程。这些模型应用于主题建模,并在Poisson因子分析下与现有算法建立了联系。示例结果显示了推断NB色散和概率参数的重要性。

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