A dependency-based machine learning approach to the identification of research topics: a case in COVID-19 studies
ISSN: 0737-8831
Article publication date: 24 August 2021
Issue publication date: 29 March 2022
Abstract
Purpose
Previous research concerning automatic extraction of research topics mostly used rule-based or topic modeling methods, which were challenged due to the limited rules, the interpretability issue and the heavy dependence on human judgment. This study aims to address these issues with the proposal of a new method that integrates machine learning models with linguistic features for the identification of research topics.
Design/methodology/approach
First, dependency relations were used to extract noun phrases from research article texts. Second, the extracted noun phrases were classified into topics and non-topics via machine learning models and linguistic and bibliometric features. Lastly, a trend analysis was performed to identify hot research topics, i.e. topics with increasing popularity.
Findings
The new method was experimented on a large dataset of COVID-19 research articles and achieved satisfactory results in terms of f-measures, accuracy and AUC values. Hot topics of COVID-19 research were also detected based on the classification results.
Originality/value
This study demonstrates that information retrieval methods can help researchers gain a better understanding of the latest trends in both COVID-19 and other research areas. The findings are significant to both researchers and policymakers.
Keywords
Acknowledgements
This study was supported by an MOE (Ministry of Education of China) Foundation Project of Humanities and Social Sciences (Linguistic Complexity-based Research on Text Classification, Grant No. 21YJC740085).
Citation
Zhu, H. and Lei, L. (2022), "A dependency-based machine learning approach to the identification of research topics: a case in COVID-19 studies", Library Hi Tech, Vol. 40 No. 2, pp. 495-515. https://doi.org/10.1108/LHT-01-2021-0051
Publisher
:Emerald Publishing Limited
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