Understanding College Students' Phone Call Behaviors Towards a Sustainable Mobile Health and Wellbeing Solution
November 11, 2020 Β· Declared Dead Β· π Actas del Congreso Internacional de IngenierΓa de Sistemas
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Authors
Yugyeong Kim, Sudip Vhaduri, Christian Poellabauer
arXiv ID
2011.06007
Category
cs.HC: Human-Computer Interaction
Cross-listed
cs.CY
Citations
20
Venue
Actas del Congreso Internacional de IngenierΓa de Sistemas
Last Checked
4 months ago
Abstract
During the transition from high school to on-campus college life, a student leaves home and starts facing enormous life changes, including meeting new people, more responsibilities, being away from family, and academic challenges. These recent changes lead to an elevation of stress and anxiety, affecting a student's health and wellbeing. With the help of smartphones and their rich collection of sensors, we can continuously monitor various factors that affect students' behavioral patterns, such as communication behaviors associated with their health, wellbeing, and academic success. In this work, we try to assess college students' communication patterns (in terms of phone call duration and frequency) that vary across various geographical contexts (e.g., dormitories, classes, dining) during different times (e.g., epochs of a day, days of a week) using visualization techniques. Findings from this work will help foster the design and delivery of smartphone-based health interventions; thereby, help the students adapt to the changes in life.
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