Latent tree models for hierarchical topic detection

作者:

摘要

We present a novel method for hierarchical topic detection where topics are obtained by clustering documents in multiple ways. Specifically, we model document collections using a class of graphical models called hierarchical latent tree models (HLTMs). The variables at the bottom level of an HLTM are observed binary variables that represent the presence/absence of words in a document. The variables at other levels are binary latent variables that represent word co-occurrence patterns or co-occurrences of such patterns. Each latent variable gives a soft partition of the documents, and document clusters in the partitions are interpreted as topics. Latent variables at high levels of the hierarchy capture long-range word co-occurrence patterns and hence give thematically more general topics, while those at low levels of the hierarchy capture short-range word co-occurrence patterns and give thematically more specific topics. In comparison with LDA-based methods, a key advantage of the new method is that it represents co-occurrence patterns explicitly using model structures. Extensive empirical results show that the new method significantly outperforms the LDA-based methods in term of model quality and meaningfulness of topics and topic hierarchies.

论文关键词:Probabilistic graphical models,Text analysis,Hierarchical latent tree analysis,Hierarchical topic detection

论文评审过程:Received 2 May 2016, Revised 18 June 2017, Accepted 26 June 2017, Available online 29 June 2017, Version of Record 13 July 2017.

论文官网地址:https://doi.org/10.1016/j.artint.2017.06.004