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Infinite State Bayesian Networks

机译:无限状态贝叶斯网络

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摘要

A general modeling framework is proposed that unifies nonparametric-Bayesian models, topic-models and Bayesian networks. This class of infinite state Bayes nets (ISBN) can be viewed as directed networks of 'hierarchical Dirichlet processes' (HDPs) where the domain of the variables can be structured (e.g. words in documents or features in images). We show that collapsed Gibbs sampling can be done efficiently in these models by leveraging the structure of the Bayes net and using the forward-filtering-backward-sampling algorithm for junction trees. Existing models, such as nested-DP, Pachinko allocation, mixed membership stochastic block models as well as a number of new models are described as ISBNs. Two experiments have been performed to illustrate these ideas.
机译:提出了统一非参数贝叶斯模型,主题模型和贝叶斯网络的通用建模框架。此类无限状态贝叶斯网络(ISBN)可被视为“分层狄利克雷过程”(HDP)的有向网络,可以在其中构造变量的域(例如文档中的单词或图像中的特征)。我们证明,通过利用贝叶斯网络的结构并针对结点树使用正向过滤-反向采样算法,可以在这些模型中有效地完成折叠的Gibbs采样。现有模型(例如嵌套DP,Pachinko分配,混合成员资格随机块模型以及许多新模型)称为ISBN。已经进行了两个实验来说明这些想法。

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