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Yousif et al., 2019 - Google Patents

Multi-task learning model based on recurrent convolutional neural networks for citation sentiment and purpose classification

Yousif et al., 2019

Document ID
5813672520499952651
Author
Yousif A
Niu Z
Chambua J
Khan Z
Publication year
Publication venue
Neurocomputing

External Links

Snippet

Automated citation analysis is a method of identifying sentiment and purpose of citations in the citing works. Most of the existing approaches use machine learning techniques to boost the performance of citation sentiment classification (CSC) and citation purpose classification …
Continue reading at www.sciencedirect.com (other versions)

Classifications

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