2018
DOI: 10.1504/ijcse.2018.10010357
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Building a large-scale testing dataset for conceptual semantic annotation of text

Abstract: One major obstacle facing the research on semantic annotation is lack of large-scale testing datasets. In this paper, we develop a systematic approach to constructing such datasets. This approach is based on guided ontology auto-construction and annotation methods which use little priori domain knowledge and little user knowledge in documents. We demonstrate the efficacy of the proposed approach by developing a large-scale testing dataset using information available from MeSH and PubMed. The developed testing … Show more

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