| Literature DB >> 28052069 |
Neal Lathia1, Gillian M Sandstrom2, Cecilia Mascolo1, Peter J Rentfrow2.
Abstract
Physical activity, both exercise and non-exercise, has far-reaching benefits to physical health. Although exercise has also been linked to psychological health (e.g., happiness), little research has examined physical activity more broadly, taking into account non-exercise activity as well as exercise. We examined the relationship between physical activity (measured broadly) and happiness using a smartphone application. This app has collected self-reports of happiness and physical activity from over ten thousand participants, while passively gathering information about physical activity from the accelerometers on users' phones. The findings reveal that individuals who are more physically active are happier. Further, individuals are happier in the moments when they are more physically active. These results emerged when assessing activity subjectively, via self-report, or objectively, via participants' smartphone accelerometers. Overall, this research suggests that not only exercise but also non-exercise physical activity is related to happiness. This research further demonstrates how smartphones can be used to collect large-scale data to examine psychological, behavioral, and health-related phenomena as they naturally occur in everyday life.Entities:
Mesh:
Year: 2017 PMID: 28052069 PMCID: PMC5213770 DOI: 10.1371/journal.pone.0160589
Source DB: PubMed Journal: PLoS One ISSN: 1932-6203 Impact factor: 3.240
Fig 1Self-Reported Mood in the app.
From left to right: (a) Measuring happiness in the app using the affect grid: users select a point on a grid that quantifies valence (horizontally) and arousal (vertically). (b) Measuring happiness with PA/NA adjectives.
Fig 2Physical Activity Data.
From left to right: (a) How users self-report their recent physical activity, and (b) the magnitude of 30-second accelerometer samples collected on one device while performing each activity. The label (e.g., Walking: 2.713) contains the value of the feature computed from the given accelerometer sample; more physically demanding activities result in higher values.
Fig 3Centroids for the clusters generated from (left) weekday and (right) weekend activity profiles.
Fig 4A random sample of 150 users from each of the weekday and weekend clusters: users in the active clusters were, on aggregate, happier than those in the less active clusters.
Multi-level modelling results predicting affect from physical activity.
Degrees of freedom are 2,005 for grid valence, 1,996 for high arousal positive affect, 1,975 for low arousal positive affect, 1,958 for high arousal negative affect and 1,958 for low arousal negative affect.
| Entered Individually | Entered Simultaneously | |||
|---|---|---|---|---|
| Measure | Self-reported physical activity | Sensed physical activity | Self-reported physical activity | Sensed physical activity |
| Grid valence | β = .04, | β = .03, | β = .03 | β = .02 |
| Positive Affect | ||||
| High Arousal | β = .09 | β = .05 | β = .08 | β = .02 |
| Low Arousal | β = -.02, | β = -.01, | β = -.01, | β = -.003, |
| Negative Affect | ||||
| High Arousal | β = -.002, | β = -.002, | β = -.002, | β = -.002, |
| Low Arousal | β = -.04 | β = -.03 | β = -.03 | β = -.02 |
* p < .05
*** p < .001.