Hierarchical neural topic modeling with manifold regularization

Ziye Chen, Cheng Ding, Yanghui Rao, Haoran Xie, Xiaohui Tao, Gary Cheng, Fu Lee Wang

Research output: Contribution to journalArticlepeer-review

8 Citations (Scopus)

Abstract

Topic models have been widely used for learning the latent explainable representation of documents, but most of the existing approaches discover topics in a flat structure. In this study, we propose an effective hierarchical neural topic model with strong interpretability. Unlike the previous neural topic models, we explicitly model the dependency between layers of a network, and then combine latent variables of different layers to reconstruct documents. Utilizing this network structure, our model can extract a tree-shaped topic hierarchy with low redundancy and good explainability by exploiting dependency matrices. Furthermore, we introduce manifold regularization into the proposed method to improve the robustness of topic modeling. Experiments on real-world datasets validate that our model outperforms other topic models in several widely used metrics with much fewer computation costs.

Original languageEnglish
Pages (from-to)2139-2160
Number of pages22
JournalWorld Wide Web
Volume24
Issue number6
DOIs
Publication statusPublished - Nov 2021

Keywords

  • Hierarchical structure
  • Manifold regularization
  • Neural topic modeling
  • Tree network

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