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Automatically structuring domain knowledge from text: An overview of current research

Published: 01 May 2012 Publication History

Abstract

This paper presents an overview of automatic methods for building domain knowledge structures (domain models) from text collections. Applications of domain models have a long history within knowledge engineering and artificial intelligence. In the last couple of decades they have surfaced noticeably as a useful tool within natural language processing, information retrieval and semantic web technology. Inspired by the ubiquitous propagation of domain model structures that are emerging in several research disciplines, we give an overview of the current research landscape and some techniques and approaches. We will also discuss trade-offs between different approaches and point to some recent trends.

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        cover image Information Processing and Management: an International Journal
        Information Processing and Management: an International Journal  Volume 48, Issue 3
        May, 2012
        211 pages

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        Pergamon Press, Inc.

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        Publication History

        Published: 01 May 2012

        Author Tags

        1. Artificial intelligence
        2. Domain models
        3. Information retrieval
        4. Natural language processing

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