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Erschienen in: Journal of Public Health 3/2024

31.01.2023 | COVID-19 | Original Article

Effect of daily new cases of COVID-19 on public sentiment and concern: Deep learning-based sentiment classification and semantic network analysis

verfasst von: ShaoPeng Che, Xiaoke Wang, Shunan Zhang, Jang Hyun Kim

Erschienen in: Journal of Public Health | Ausgabe 3/2024

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Abstract

Aim

This study explored the influence of daily new case videos posted by public health agencies (PHAs) on TikTok in the context of COVID-19 normalization, as well as public sentiment and concerns. Five different stages were used, based on the Crisis and Emergency Risk Communication model, amidst the 2022 Shanghai lockdown.

Subject and Methods

After dividing the duration of the 2022 Shanghai lockdown into stages, we crawled all the user comments of videos posted by Healthy China on TikTok with the theme of daily new cases based on these five stages. Third, we constructed the pre-training model, ERNIE, to classify the sentiment of user comments. Finally, we performed semantic network analyses based on the sentiment classification results.

Results

First, the high cost of fighting the epidemic during the 2022 Shanghai lockdown was why ordinary people were reluctant to cooperate with the anti-epidemic policy in the pre-crisis stage. Second, Shanghai unilaterally revised the definition of asymptomatic patients led to an escalation of risk levels and control conditions in other regions, ultimately affecting the lives and work of ordinary people in the area during the initial event stage. Third, the public reported specific details that affected their lives due to the long-term resistance to the epidemic in the maintenance stage. Fourth, the public became bored with videos regarding daily new cases in the resolution stage. Finally, the main reason for the negative public sentiment was that the local government did not follow the central government’s anti-epidemic policy.

Conclusion

Our results suggest that the methodology used in this study is feasible. Furthermore, our findings will help the Chinese government or PHAs improve the possible behaviors that displease the public in the anti-epidemic process.
Literatur
Zurück zum Zitat Chen Q, Min C, Zhang W, Ma X, Evans R (2021) Factors driving citizen engagement with government TikTok accounts during the COVID-19 pandemic: Model development and analysis. J Med Internet Res 23(2):e21463. https://doi.org/10.2196/21463 Chen Q, Min C, Zhang W, Ma X, Evans R (2021) Factors driving citizen engagement with government TikTok accounts during the COVID-19 pandemic: Model development and analysis. J Med Internet Res 23(2):e21463. https://​doi.​org/​10.​2196/​21463
Metadaten
Titel
Effect of daily new cases of COVID-19 on public sentiment and concern: Deep learning-based sentiment classification and semantic network analysis
verfasst von
ShaoPeng Che
Xiaoke Wang
Shunan Zhang
Jang Hyun Kim
Publikationsdatum
31.01.2023
Verlag
Springer Berlin Heidelberg
Schlagwort
COVID-19
Erschienen in
Journal of Public Health / Ausgabe 3/2024
Print ISSN: 2198-1833
Elektronische ISSN: 1613-2238
DOI
https://doi.org/10.1007/s10389-023-01833-4

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