Do scholars respond faster than Google trends in discussing COVID-19 issues? An approach to textual big data

Benson Shu Yan LAM, Man Ying Amanda CHU, Jacky Ngai Lam CHAN, Mike Ka Pui SO

Research output: Contribution to journalArticlespeer-review

Abstract

Background: The COVID-19 pandemic has posed various difficulties for policymakers, such as the identification of health issues, establishment of policy priorities, formulation of regulations, and promotion of economic competitiveness. Evidence-based practices and data-driven decision-making have been recognized as valuable tools for improving the policymaking process. Nevertheless, due to the abundance of data, there is a need to develop sophisticated analytical techniques and tools to efficiently extract and analyze the data. Methods: Using Oxford COVID-19 Government Response Tracker, we categorize the policy responses into 6 different categories: (a) containment and closure, (b) health systems, (c) vaccines, (d) economic, (e) country, and (f) others. We proposed a novel research framework to compare the response times of the scholars and the general public. To achieve this, we analyzed more than 400,000 research abstracts published over the past 2.5 years, along with text information from Google Trends as a proxy for topics of public concern. We introduced an innovative text-mining method: coherent topic clustering to analyze the huge number of abstracts. Results: Our results show that the research abstracts not only discussed almost all of the COVID-19 issues earlier than Google Trends did, but they also provided more in-depth coverage. This should help policymakers identify core COVID-19 issues and act earlier. Besides, our clustering method can better reflect the main messages of the abstracts than a recent advanced deep learning-based topic modeling tool. Conclusion: Scholars generally have a faster response in discussing COVID-19 issues than Google Trends. Copyright © 2024 Benson Shu Yan Lam et al.

Original languageEnglish
Article number0116
JournalHealth Data Science
Volume4
DOIs
Publication statusPublished - Feb 2024

Citation

Lam, B. S. Y., Chu, A. M. Y., Chan, J. N. L., & So, M. K. P. (2024). Do scholars respond faster than Google trends in discussing COVID-19 issues? An approach to textual big data. Health Data Science, 4, Article 0116. https://doi.org/10.34133/hds.0116

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