Decoupling Sparsity and Smoothness in the Discrete Hierarchical Dirichlet Process
–Neural Information Processing Systems
We present a nonparametric hierarchical Bayesian model of document collections that decouples sparsity and smoothness in the component distributions (i.e., the topics). In the sparse topic model (STM), each topic is represented by a bank of selector variables that determine which terms appear in the topic. Thus each topic is associated with a subset of the vocabulary, and topic smoothness is modeled on this subset. We develop an efficient Gibbs sampler for the STM that includes a general-purpose method for sampling from a Dirichlet mixture with a combinatorial number of components. We demonstrate the STM on four real-world datasets.
Neural Information Processing Systems
Apr-6-2023, 13:49:20 GMT
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