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      A Tweet Dataset Annotated for Named Entity Recognition and Stance Detection

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          Abstract

          Annotated datasets in different domains are critical for many supervised learning-based solutions to related problems and for the evaluation of the proposed solutions. Topics in natural language processing (NLP) similarly require annotated datasets to be used for such purposes. In this paper, we target at two NLP problems, named entity recognition and stance detection, and present the details of a tweet dataset in Turkish annotated for named entity and stance information. Within the course of the current study, both the named entity and stance annotations of the included tweets are made publicly available, although previously the dataset has been publicly shared with stance annotations only. We believe that this dataset will be useful for uncovering the possible relationships between named entity recognition and stance detection in tweets.

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          SemEval-2016 Task 6: Detecting Stance in Tweets

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            Recent Named Entity Recognition and Classification techniques: A systematic review

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              A Dataset for Multi-Target Stance Detection

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                Author and article information

                Journal
                15 January 2019
                Article
                1901.04787
                12a28975-1fc1-44a8-b41f-8746e67c46ef

                http://arxiv.org/licenses/nonexclusive-distrib/1.0/

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                4 pages
                cs.CL

                Theoretical computer science
                Theoretical computer science

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