| Literature DB >> 28058409 |
Hillol Sarker1, Matthew Tyburski2, Md Mahbubur Rahman1, Karen Hovsepian3, Moushumi Sharmin4, David H Epstein2, Kenzie L Preston2, C Debra Furr-Holden5, Adam Milam5, Inbal Nahum-Shani6, Mustafa al'Absi7, Santosh Kumar1.
Abstract
Management of daily stress can be greatly improved by delivering sensor-triggered just-in-time interventions (JITIs) on mobile devices. The success of such JITIs critically depends on being able to mine the time series of noisy sensor data to find the most opportune moments. In this paper, we propose a time series pattern mining method to detect significant stress episodes in a time series of discontinuous and rapidly varying stress data. We apply our model to 4 weeks of physiological, GPS, and activity data collected from 38 users in their natural environment to discover patterns of stress in real-life. We find that the duration of a prior stress episode predicts the duration of the next stress episode and stress in mornings and evenings is lower than during the day. We then analyze the relationship between stress and objectively rated disorder in the surrounding neighborhood and develop a model to predict stressful episodes.Entities:
Keywords: Intervention; Mobile Health (mHealth); Stress Management
Year: 2016 PMID: 28058409 PMCID: PMC5207658 DOI: 10.1145/2858036.2858218
Source DB: PubMed Journal: Proc SIGCHI Conf Hum Factor Comput Syst