Publication | Closed Access
Probabilistic author-topic models for information discovery
581
Citations
26
References
2004
Year
Unknown Venue
EngineeringCorpus LinguisticsText MiningAutomatic SummarizationNatural Language ProcessingComputational Social ScienceInformation RetrievalData ScienceData MiningComputational LinguisticsLanguage StudiesInformation DiscoveryStatisticsDocument ClusteringLarge Text CollectionsKnowledge DiscoveryAuthor ProfilingInformation ExtractionTopic ModelProbability DistributionKeyword ExtractionTopic Mixture
We propose a new unsupervised learning technique for extracting information from large text collections. We model documents as if they were generated by a two-stage stochastic process. Each author is represented by a probability distribution over topics, and each topic is represented as a probability distribution over words for that topic. The words in a multi-author paper are assumed to be the result of a mixture of each authors' topic mixture. The topic-word and author-topic distributions are learned from data in an unsupervised manner using a Markov chain Monte Carlo algorithm. We apply the methodology to a large corpus of 160,000 abstracts and 85,000 authors from the well-known CiteSeer digital library, and learn a model with 300 topics. We discuss in detail the interpretation of the results discovered by the system including specific topic and author models, ranking of authors by topic and topics by author, significant trends in the computer science literature between 1990 and 2002, parsing of abstracts by topics and authors and detection of unusual papers by specific authors. An online query interface to the model is also discussed that allows interactive exploration of author-topic models for corpora such as CiteSeer.
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