Abstract

We address the problem of learning topic hierarchies from data. The model selection problem in this domain is daunting—which of the large collection of possible trees to use? We take a Bayesian approach, generating an appropriate prior via a distribution on partitions that we refer to as the nested Chinese restaurant process. This nonparametric prior allows arbitrarily large branching factors and readily accommodates growing data collections. We build a hierarchical topic model by combining this prior with a likelihood that is based on a hierarchical variant of latent Dirichlet allocation. We illustrate our approach on simulated data and with an application to the modeling of NIPS abstracts.

Citation impact

938
total citations
FWCI
11.26
Percentile
100%
References
12
Citations per year

Authors

4

Topics & keywords

Keywords
  • Latent Dirichlet allocation
  • Computer science
  • Hierarchical Dirichlet process
  • Topic model
  • Dirichlet process
  • Dirichlet distribution
  • Hierarchical database model
  • Data modeling
No related works found for this paper.