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Symmetric Correspondence Topic Models for Multilingual Text Analysis
Kosuke Fukumasu · Koji Eguchi · Eric Xing

Wed Dec 5th 05:52 -- 05:56 PM @ Harveys Convention Center Floor, CC

Topic modeling is a widely used approach to analyzing large text collections. A small number of multilingual topic models have recently been explored to discover latent topics among parallel or comparable documents, such as in Wikipedia. Other topic models that were originally proposed for structured data are also applicable to multilingual documents. Correspondence Latent Dirichlet Allocation (CorrLDA) is one such model; however, it requires a pivot language to be specified in advance. We propose a new topic model, Symmetric Correspondence LDA (SymCorrLDA), that incorporates a hidden variable to control a pivot language, in an extension of CorrLDA. We experimented with two multilingual comparable datasets extracted from Wikipedia and demonstrate that SymCorrLDA is more effective than some other existing multilingual topic models.

Author Information

Kosuke Fukumasu (Kobe University)
Koji Eguchi (Kobe University)
Eric Xing (Petuum Inc. / Carnegie Mellon University)

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