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Comparison of wellbeing structures based on survey responses and social media language: A network analysis

Research output: Contribution to JournalArticleAcademicpeer-review

Abstract

Wellbeing is predominantly measured through surveys but is increasingly measured by analysing individuals' language on social media platforms using social media text mining (SMTM). To investigate whether the structure of wellbeing is similar across both data collection methods, we compared networks derived from survey items and social media language features collected from the same participants. The dataset was split into an independent exploration (n = 1169) and a final subset (n = 1000). After estimating exploration networks, redundant survey items and language topics were eliminated. Final networks were then estimated using exploratory graph analysis (EGA). The networks of survey items and those from language topics were similar, both consisting of five wellbeing dimensions. The dimensions in the survey- and SMTM-based assessment of wellbeing showed convergent structures congruent with theories of wellbeing. Specific dimensions found in each network reflected the unique aspects of each type of data (survey and social media language). Networks derived from both language features and survey items show similar structures. Survey and SMTM methods may provide complementary methods to understand differences in human wellbeing.
Original languageEnglish
Pages (from-to)1555-1582
Number of pages28
JournalApplied Psychology: Health and Well-Being
Volume15
Issue number4
Early online date10 May 2023
DOIs
Publication statusPublished - Nov 2023

Funding

FundersFunder number
European Research Council
Horizon 2020 Framework Programme771057

    Keywords

    • language
    • natural language processing,
    • psychological networks
    • social media
    • wellbeing
    • well-being

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