Predicting Big Five personality traits from smartphone data: A meta‐analysis on the potential of digital phenotyping

Author:

Marengo Davide1,Elhai Jon D.23,Montag Christian4

Affiliation:

1. Department of Psychology University of Turin Turin Italy

2. Department of Psychology The University of Toledo Toledo Ohio USA

3. Department of Psychiatry The University of Toledo Toledo Ohio USA

4. Department of Molecular Psychology Institute of Psychology and Education, Ulm University Ulm Germany

Abstract

AbstractObjectiveSince the first study linking recorded smartphone variables to self‐reported personality in 2011, many additional studies have been published investigating this association. In the present meta‐analyses, we aimed to understand how strongly personality can be predicted via smartphone data.MethodMeta‐analytical calculations were used to assess the association between smartphone data and Big Five traits. Because of the lack of independence of many included studies, analyses were performed using a multilevel approach.ResultsBased on data collected from 21 distinct studies, extraversion showed the largest association with the digital footprints derived from smartphone data (r = .35), while remaining traits showed smaller associations (ranging from 0.23 to 0.25). For all traits except neuroticism, moderator analyses showed that prediction performance was improved when multiple features were combined together in a single predictive model. Additionally, the strength of the prediction of extraversion was improved when call and text log data were used to perform the prediction, as opposed to other types of smartphone dataConclusionsOur synthesis reveals small‐to‐moderate associations between smartphone activity data and Big Five traits. The opportunities, but also dangers of the digital phenotyping of personality traits based on traces of users' activity on a smartphone data are discussed.

Publisher

Wiley

Subject

Social Psychology

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