Concepedia

Publication | Open Access

Visualization of time-series sensor data to inform the design of just-in-time adaptive stress interventions

75

Citations

34

References

2015

Year

Abstract

We investigate needs, challenges, and opportunities in visualizing time-series sensor data on stress to inform the design of just-in-time adaptive interventions (JITAIs). We identify seven key challenges: massive volume and variety of data, complexity in identifying stressors, scalability of space, multifaceted relationship between stress and time, a need for representation at multiple granularities, interperson variability, and limited understanding of JITAI design requirements due to its novelty. We propose four new visualizations based on one million minutes of sensor data (n=70). We evaluate our visualizations with stress researchers (n=6) to gain first insights into its usability and usefulness in JITAI design. Our results indicate that spatio-temporal visualizations help identify and explain between- and within-person variability in stress patterns and contextual visualizations enable decisions regarding the timing, content, and modality of intervention. Interestingly, a granular representation is considered informative but noise-prone; an abstract representation is the preferred starting point for designing JITAIs.

References

YearCitations

1985

32.3K

2015

9.3K

1988

5.3K

1992

3K

2016

2K

1992

1.3K

2008

1.1K

2009

578

2012

495

2015

338

Page 1