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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sg-ntu-dr.10356-1823772025-01-27T06:14:32Z Deep learning meets bibliometrics: a survey of citation function classification Zhang, Yang Wang, Yufei Sheng, Quan Z. Yao, Lina Chen, Haihua Wang, Kai Mahmood, Adnan Zhang, Emma Wei Zaib, Munazza Sagar, Subhash Zhao, Rongying College of Computing and Data Science Computer and Information Science Citation function Deep learning 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. Published version This study is supported by ARC (Australian Research Council) (Grant Number: LP190100140 and DP230100233). 2025-01-27T06:14:32Z 2025-01-27T06:14:32Z 2025 Journal Article Zhang, Y., Wang, Y., Sheng, Q. Z., Yao, L., Chen, H., Wang, K., Mahmood, A., Zhang, E. W., Zaib, M., Sagar, S. & Zhao, R. (2025). Deep learning meets bibliometrics: a survey of citation function classification. Journal of Informetrics, 19(1), 101608-. https://dx.doi.org/10.1016/j.joi.2024.101608 1751-1577 https://hdl.handle.net/10356/182377 10.1016/j.joi.2024.101608 2-s2.0-85208656912 1 19 101608 en Journal of Informetrics © 2024 The Authors. Published by Elsevier Ltd. This is an open access article under the CC BY license (http://creativecommons.org/licenses/by/4.0/). application/pdf |
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Computer and Information Science Citation function Deep learning Zhang, Yang Wang, Yufei Sheng, Quan Z. Yao, Lina Chen, Haihua Wang, Kai Mahmood, Adnan Zhang, Emma Wei Zaib, Munazza Sagar, Subhash Zhao, Rongying Deep learning meets bibliometrics: a survey of citation function classification |
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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. |
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College of Computing and Data Science |
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College of Computing and Data Science Zhang, Yang Wang, Yufei Sheng, Quan Z. Yao, Lina Chen, Haihua Wang, Kai Mahmood, Adnan Zhang, Emma Wei Zaib, Munazza Sagar, Subhash Zhao, Rongying |
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Article |
author |
Zhang, Yang Wang, Yufei Sheng, Quan Z. Yao, Lina Chen, Haihua Wang, Kai Mahmood, Adnan Zhang, Emma Wei Zaib, Munazza Sagar, Subhash Zhao, Rongying |
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Zhang, Yang |
title |
Deep learning meets bibliometrics: a survey of citation function classification |
title_short |
Deep learning meets bibliometrics: a survey of citation function classification |
title_full |
Deep learning meets bibliometrics: a survey of citation function classification |
title_fullStr |
Deep learning meets bibliometrics: a survey of citation function classification |
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Deep learning meets bibliometrics: a survey of citation function classification |
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deep learning meets bibliometrics: a survey of citation function classification |
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2025 |
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https://hdl.handle.net/10356/182377 |
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1823108709325209600 |