Deep learning meets bibliometrics: a survey of citation function classification

With the advent and progression of Natural Language Processing (NLP) methodologies, the domain of automatic citation function classification has gained popularity and considerable research efforts have been contributed to this task. Automatic citation function classification has a joint computationa...

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Bibliographic Details
Main Authors: Zhang, Yang, Wang, Yufei, Sheng, Quan Z., Yao, Lina, Chen, Haihua, Wang, Kai, Mahmood, Adnan, Zhang, Emma Wei, Zaib, Munazza, Sagar, Subhash, Zhao, Rongying
Other Authors: College of Computing and Data Science
Format: Article
Language:English
Published: 2025
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Online Access:https://hdl.handle.net/10356/182377
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Institution: Nanyang Technological University
Language: English
Description
Summary:With the advent and progression of Natural Language Processing (NLP) methodologies, the domain of automatic citation function classification has gained popularity and considerable research efforts have been contributed to this task. Automatic citation function classification has a joint computational linguistic and bibliometrics background. However, due to the different expertise in both fields, there is rarely a comprehensive and unified analysis of this task. We provide a detailed and nuanced examination analysis of the evolution of citation function classification task from the dimensions of citation function annotation schemes, widely employed benchmarks, and computational models. We first present the origins and the development of the citation function classification task. From the perspective of multi-disciplinary integration, we then discuss how bibliometrics and NLP can be better combined to contribute to the citation function classification task. Finally, based on the deficiencies that we have found in the task, we suggest some promising prospects in both bibliometrics and NLP to be investigated.