Title
Exploring Compliance: Observations from a Large Scale Fitbit Study.
Abstract
Universities often draw from their student body when conducting human subject studies. Unfortunately, as with any longitudinal human studies project, data quality problems arise from student's waning compliance to the study. While incentive mechanisms may be employed to boost student compliance, such systems may not encourage all participants in the same manner. This paper coupled student's compliance rates with other personal data collected via Fitbits, smartphones, and surveys. Machine learning algorithms were then employed to explore factors that influence compliance. With such insight, universities may target groups in their studies who are more likely to become non-compliant and implement preventative strategies such as tailoring their incentive mechanisms to accommodate a diverse population. In doing so, data quality problems stemming from failing compliance can be minimized.
Year
DOI
Venue
2017
10.1145/3055601.3055608
SocialSens@CPSWeek
DocType
Citations 
PageRank 
Conference
1
0.37
References 
Authors
4
7
Name
Order
Citations
PageRank
Louis Faust121.40
Rachael Purta2324.14
David Hachen39612.38
Aaron Striegel432142.30
Christian Poellabauer552960.18
Omar Lizardo6469.55
Nitesh Chawla77257345.79