Identifying Behavioral Phenotypes of Loneliness and Social Isolation with Passive Sensing: Statistical Analysis, Data Mining and Machine Learning of Smartphone and Fitbit Data

Jul 26, 2019JMIR mHealth and uHealth

Using Smartphone and Fitbit Data to Identify Behavior Patterns Linked to Loneliness and Social Isolation

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Abstract

The average loneliness score among 160 college students was above 43, with 63.8% classified as experiencing high loneliness at the start of the semester.

  • A significant portion of participants, 58.8%, remained in the high loneliness category by the end of the semester.
  • Scores greater than one standard deviation above the mean were found in 12.5% of participants at both survey points.
  • An accuracy of 80.2% was achieved in detecting loneliness levels using machine learning, with an 88.4% accuracy for detecting changes in loneliness levels.
  • Students with high loneliness spent less time outside of campus on weekend evenings and engaged less in social events during weekday evenings.
  • Increased activity and decreased sedentary behavior in the evening were associated with a reduction in loneliness levels over the semester.

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