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All Computer Science Papers @ arXiv.org -- A High-Quality Gold Standard for Citation-based Tasks

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https://zenodo.org/record/3535001
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We propose a newly-created gold standard data set for citation-based tasks. This gold standard is based on all computer science papers in arXiv.org. Abstract. Analyzing and recommending citations with their specific citation contexts have recently received much attention due to the growing number of available publications. Although data sets such as CiteSeerX have been created for evaluating approaches for such tasks, those data sets exhibit striking defects. This is understandable if one considers that both information extraction and entity linking as well as entity resolution need to be performed. In this paper, we propose a new evaluation data set for citation-dependent tasks based on arXiv.org publications. Our data set is characterized by the fact that it exhibits almost zero noise in the extracted content and that all citations are linked to their correct publications. Besides the pure content, available on a sentence-basis, cited publications are annotated directly in the text via global identifiers. As far as possible, referenced publications are further linked to DBLP. Our data set consists of over 15M sentences and is freely available for research purposes. It can be used for training and testing citation-based tasks, such as recommending citations, determining the functions or importance of citations, and summarizing documents based on their citations.   More information can be found in our publication "A High-Quality Gold Standard for Citation-based Tasks" (LREC'18). You can cite the data set as follows: @inproceedings{DBLP:conf/lrec/0001TJ18, author = {Michael F{\"{a}}rber and Alexander Thiemann and Adam Jatowt}, title = "{A High-Quality Gold Standard for Citation-based Tasks}", booktitle = "{Proceedings of the Eleventh International Conference on Language Resources and Evaluation}", series = "{LREC'18}", location = "{Miyazaki, Japan}", year = {2018}, url = {http://www.lrec-conf.org/proceedings/lrec2018/summaries/283.html} }
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2020-01-24
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