SciSumm 2017: Employing Word Vectors for Identifying, Classifying and Summarizing Scientific Documents
نویسندگان
چکیده
This paper describes our approach on ”Recognizing Reference Spans,Classifying Their Discourse Facets and Summarizing from Reference Text” as an attempt in the shared task on relationship mining and scientific summarization of computational linguistics research papers at SIGIR 2017.
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