Publication | Closed Access
Pachinko allocation
616
Citations
12
References
2006
Year
Unknown Venue
Natural Language ProcessingDocument ClusteringLatent Dirichlet AllocationInformation RetrievalData ScienceEngineeringCorpus LinguisticsTopical Keyword CoherenceComputational LinguisticsPachinko Allocation ModelKnowledge DiscoveryKeyword ExtractionEntity SummarizationTopic ModelLanguage StudiesLinguisticsText MiningAutomatic Summarization
Latent Dirichlet allocation (LDA) and other related topic models are increasingly popular tools for summarization and manifold discovery in discrete data. However, LDA does not capture correlations between topics. In this paper, we introduce the pachinko allocation model (PAM), which captures arbitrary, nested, and possibly sparse correlations between topics using a directed acyclic graph (DAG). The leaves of the DAG represent individual words in the vocabulary, while each interior node represents a correlation among its children, which may be words or other interior nodes (topics). PAM provides a flexible alternative to recent work by Blei and Lafferty (2006), which captures correlations only between pairs of topics. Using text data from newsgroups, historic NIPS proceedings and other research paper corpora, we show improved performance of PAM in document classification, likelihood of held-out data, the ability to support finer-grained topics, and topical keyword coherence.
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