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Mining digital traces of facebook activity for the prediction of individual differences in tendencies toward social networks use disorder: a machine learning approach

fpsyg-13-830120.pdf (275.2Kb)
Data_Sheet_1.docx (80.90Kb)

peer-reviewed

Erstveröffentlichung
2022-03-08
Authors
Marengo, Davide
Montag, Christian
Mignogna, Alessandro
Settanni, Michele
Wissenschaftlicher Artikel


Published in
Frontiers in Psychology ; 13 (2022). - Art.-Nr. 830120. - eISSN 1664-1078
Link to original publication
https://dx.doi.org/10.3389/fpsyg.2022.830120
Faculties
Fakultät für Ingenieurwissenschaften, Informatik und Psychologie
Institutions
Institut für Psychologie und Pädagogik
External cooperations
University of Turin
Document version
published version (publisher's PDF)
Abstract
More than three billion users are currently on one of Meta’s online platforms with Facebook being still their most prominent social media service. It is well known that Facebook has designed a highly immersive social media service with the aim to prolong online time of its users, as this results in more digital footprints to be studied and monetized (via psychological targeting). In this context, it is debated if social media platforms can elicit addictive behaviors. In the present work, we demonstrate in N = 1,094 users that it is possible to predict from digital footprints of the Facebook users their self-reported addictive tendencies toward social media (R > 0.30) by applying machine-learning strategies. More specifically, we analyzed the predictive power of a set of models based on different sets of features extracted from digital traces, namely posting activity, language use, and page Likes. To maximize the predictive power of the models, we used an ensemble of linear and non-linear prediction algorithms. This work showed also sufficient accuracy rates (AUC above 0.70) in distinguishing between disordered and non-disordered social media users. In sum, individual differences in tendencies toward “social networks use disorder” can be inferred from digital traces left on the social media platform Facebook. Please note that the present work is limited by its cross-sectional design.
Is supplemented by
https://www.frontiersin.org/articles/10.3389/fpsyg.2022.830120/full#supplementary-material
Subject headings
[GND]: Social Media
[LCSH]: Data mining
[Free subject headings]: digital footprints | digital phenotyping | problematic social media use | social networks use disorder | behavioral addictions
[DDC subject group]: DDC 150 / Psychology | DDC 300 / Social sciences
License
CC BY 4.0 International
https://creativecommons.org/licenses/by/4.0/

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DOI & citation

Please use this identifier to cite or link to this item: http://dx.doi.org/10.18725/OPARU-43106

Marengo, Davide et al. (2022): Mining digital traces of facebook activity for the prediction of individual differences in tendencies toward social networks use disorder: a machine learning approach. Open Access Repositorium der Universität Ulm und Technischen Hochschule Ulm. http://dx.doi.org/10.18725/OPARU-43106
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