2021
DOI: 10.48550/arxiv.2107.02757
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Sawtooth Factorial Topic Embeddings Guided Gamma Belief Network

Abstract: Hierarchical topic models such as the gamma belief network (GBN) have delivered promising results in mining multi-layer document representations and discovering interpretable topic taxonomies. However, they often assume in the prior that the topics at each layer are independently drawn from the Dirichlet distribution, ignoring the dependencies between the topics both at the same layer and across different layers. To relax this assumption, we propose sawtooth factorial topic embedding guided GBN, a deep generat… Show more

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