KMID : 1132720200180020024
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Genomics & Informatics 2020 Volume.18 No. 2 p.24 ~ p.24
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An empirical evaluation of electronic annotation tools for Twitter data
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Weissenbacher Davy
O¡¯Connor Karen Hiraki Aiko T. Kim Jin-Dong Gonzalez-Hernandez Graciela
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Abstract
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Despite a growing number of natural language processing shared-tasks dedicated to the use of Twitter data, there is currently no ad-hoc annotation tool for the purpose. During the 6th edition of Biomedical Linked Annotation Hackathon (BLAH), after a short review of 19 generic annotation tools, we adapted GATE and TextAE for annotating Twitter timelines. Although none of the tools reviewed allow the annotation of all information inherent of Twitter timelines, a few may be suitable provided the willingness by annotators to compromise on some functionality.
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KEYWORD
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annotation tool, natural language processing, social media mining
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FullTexts / Linksout information
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