Satisfaction with Life Manifests in Physical Activity Patterns Captured with Smartphones
Listed in
This article is not in any list yet, why not save it to one of your lists.Abstract
Satisfaction with life (SWL) plays a vital role in human prosperity, making it a key focus for practitioners and researchers alike. Research has shown that between-person differences in SWL relate to self-reported patterns in everyday activity including physical activeness and inactiveness during daytimes and overnight. However, these relationships rarely replicate in objective measures of activity, leaving real-life manifestations of SWL obscure. Here, we use an interpretable machine learning approach to examine how smartphone-captured patterns of everyday activity (1,232 behavioral features) relate to SWL in an international dataset (N = 2,272) combining four independently collected samples. The cross-validated results demonstrate that especially extremeness and variation in everyday activity patterns predict SWL (r_Md = .18, r_IQR = [.14, .21]) and that activity predictiveness varies especially with individuals’ personality. These findings enhance our understanding of real-life manifestations of SWL in everyday activity patterns, highlighting the potential of smartphone-based methods for well-being research and interventions.