Medfluencer: A Network Representation of Medical Influencers' Identities and Discourse on Social Media
In our study, we first constructed a dataset from the tweets of the top 100 medical influencers with the highest Influencer Score during the COVID-19 pandemic. This dataset was then used to construct a socio-semantic network, mapping both their identities and key topics, which are crucial for unders...
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Zusammenfassung: | In our study, we first constructed a dataset from the tweets of the top 100
medical influencers with the highest Influencer Score during the COVID-19
pandemic. This dataset was then used to construct a socio-semantic network,
mapping both their identities and key topics, which are crucial for
understanding their impact on public health discourse. To achieve this, we
developed a few-shot multi-label classifier to identify influencers and their
network actors' identities, employed BERTopic for extracting thematic content,
and integrated these components into a network model to analyze their impact on
health discourse. To ensure the reproducibility of our results, we have made
the code available at https://github.com/ZhijinGuo/Medinfluencer. |
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DOI: | 10.48550/arxiv.2407.05198 |