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Knowledge Management for Biomedical Literature: The Function of Text-Mining Technologies in Life-Science Research, 2008. In INTED 2008. International Technology, Educationand Development Conference,Valencia (Spain),2008.INTERNATIONAL ASSOCIATION OF TECNOLOGY, EDUCATION AND DEVELOPMENT (IATED). (Published) [Conference Proceedings].

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Citable URI: http://hdl.handle.net/10760/11339

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Editor(s): Galvez, Carmen
Title: Knowledge Management for Biomedical Literature: The Function of Text-Mining Technologies in Life-Science Research
Subjects: L. Information technology and library technology > LL. Automated language processing
Date: 2008
Abstract: Efficient information retrieval and extraction is a major challenge in life-science research. The Knowledge Management (KM) for biomedical literature aims to establish an environment, utilizing information technologies, to facilitate better acquisition, generation, codification, and transfer of knowledge. Knowledge Discovery in Text (KDT) is one of the goals in KM, so as to find hidden information in the literature by exploring the internal structure of knowledge network created by the textual information. Knowledge discovery could be major help in the discovery of indirect relationships, which might imply new scientific discoveries. Text-mining provides methods and technologies to retrieve and extract information contained in free-text automatically. Moreover, it enables analysis of large collections of unstructured documents for the purposes of extracting interesting and non-trivial patterns of knowledge. Biomedical text-mining is organized in stages classified into the following steps: identification of biological entities, identification of biological relations and classification of entity relations. Here, we discuss the challenges and function of biomedical text-mining in the KM for biomedical literature.
Conference: INTED 2008. International Technology, Educationand Development Conference
Conference Date: 2008
Location: Valencia (Spain)
Publisher: INTERNATIONAL ASSOCIATION OF TECNOLOGY, EDUCATION AND DEVELOPMENT (IATED)
Alternative Locations: http://www.iated.org/inted2008/
Keywords: Knowledge Management (KM);Biomedical Tex-Mining; Natural Language Processing (NLP)
Country: Spain
Type: Conference Proceedings
Rights: http://eprints.rclis.org/copyright/



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