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Topic Models for Semantically Annotated Document Collections

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by Markus Bundschus , Volker Tresp , Hans-peter Kriegel
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BibTeX

@MISC{Bundschus_topicmodels,
    author = {Markus Bundschus and Volker Tresp and Hans-peter Kriegel},
    title = {Topic Models for Semantically Annotated Document Collections},
    year = {}
}

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Abstract

Increasingly, web document collections such as PubMed and DBPedia, but also social bookmarking systems, are annotated with semantic meta data. Given that the number of semantically annotated document collections is expected to increase in the near future, it is of interest to analyze if topic models might be able to play a larger role. Since most of the time, annotations are noisy and even human experts annotate inconsistently, a probabilistic view, as provided by topic models, is appropriate. Besides a number of interesting knowledge discovery tasks, representing topics by meta data has an additional advantage: if the concepts refer to real-world objects, the readability of the topics is greatly improved. In this paper, we present several suitable strategies to model this type of data and show experiments on two large semantically annotated document collections. 1

Keyphrases

topic model    semantically annotated document collection    document collection    semantic meta data    near future    knowledge discovery task    additional advantage    present several suitable strategy    real-world object    meta data    show experiment    web document collection    human expert    probabilistic view   

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