posted on 2025-08-02, 12:07authored byL Ansell, L Dalla Valle
The Covid-19 pandemic presents a serious threat to people's health, resulting in over 250 million confirmed cases and over 5 million deaths globally. To reduce the burden on national health care systems and to mitigate the effects of the outbreak, accurate modelling and forecasting methods for short- and long-term health demand are needed to inform government interventions aiming at curbing the pandemic. Current research on Covid-19 is typically based on a single source of information, specifically on structured historical pandemic data. Other studies are exclusively focused on unstructured online retrieved insights, such as data available from social media. However, the combined use of structured and unstructured information is still uncharted. This paper aims at filling this gap, by leveraging historical and social media information with a novel data integration methodology. The proposed approach is based on vine copulas, which allow us to exploit the dependencies between different sources of information. We apply the methodology to combine structured datasets retrieved from official sources and a big unstructured dataset of information collected from social media. The results show that the combined use of official and online generated information contributes to yield a more accurate assessment of the evolution of the Covid-19 pandemic, compared to the sole use of official data.
Funding
16R16P01302
EP/W021986/1
Engineering and Physical Sciences Research Council (EPSRC)
This is the final version. Available from Nature Research via the DOI in this record.
Data availability:
The datasets analysed during the current study are available in the GOV.UK repository, https://coronavirus.data.gov.uk, in the Johns Hopkins University repository, https://coronavirus.jhu.edu/region/united-kingdom, via the Twitter API, https://developer.twitter.com, and via the Google Trends API, https://trends.google.com.
Code availability:
The code that implements the methodology described in the paper is available in the GitHub repository https://github.com/laurenansell/A-New-Data-Integration-Framework-for-Covid-19-Social-Media-Information.