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      Short text similarity based on probabilistic topics

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      Knowledge and Information Systems
      Springer Nature

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          Finding scientific topics.

          A first step in identifying the content of a document is determining which topics that document addresses. We describe a generative model for documents, introduced by Blei, Ng, and Jordan [Blei, D. M., Ng, A. Y. & Jordan, M. I. (2003) J. Machine Learn. Res. 3, 993-1022], in which each document is generated by choosing a distribution over topics and then choosing each word in the document from a topic selected according to this distribution. We then present a Markov chain Monte Carlo algorithm for inference in this model. We use this algorithm to analyze abstracts from PNAS by using Bayesian model selection to establish the number of topics. We show that the extracted topics capture meaningful structure in the data, consistent with the class designations provided by the authors of the articles, and outline further applications of this analysis, including identifying "hot topics" by examining temporal dynamics and tagging abstracts to illustrate semantic content.
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            Relevance based language models

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              Learning question classifiers

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                Author and article information

                Journal
                Knowledge and Information Systems
                Knowl Inf Syst
                Springer Nature
                0219-1377
                0219-3116
                December 2010
                September 17 2009
                : 25
                : 3
                : 473-491
                Article
                10.1007/s10115-009-0250-y
                e3841b03-f57b-447e-b44d-35a780b2ed00
                © 2009
                History

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