| Literature DB >> 28840199 |
Munmun De Choudhury1, Mrinal Kumar2, Ingmar Weber3.
Abstract
The growing amount of data collected by quantified self tools and social media hold great potential for applications in personalized medicine. Whereas the first includes health-related physiological signals, the latter provides insights into a user's behavior. However, the two sources of data have largely been studied in isolation. We analyze public data from users who have chosen to connect their MyFitnessPal and Twitter accounts. We show that a user's diet compliance success, measured via their self-logged food diaries, can be predicted using features derived from social media: linguistic, activity, and social capital. We find that users with more positive affect and a larger social network are more successful in succeeding in their dietary goals. Using a Granger causality methodology, we also show that social media can help predict daily changes in diet compliance success or failure with an accuracy of 77%, that improves over baseline techniques by 17%. We discuss the implications of our work in the design of improved health interventions for behavior change.Entities:
Keywords: MyFitnessPal; Twitter; behavior change; diet; fitness; health; quantified self; social media; well-being
Year: 2017 PMID: 28840199 PMCID: PMC5565732 DOI: 10.1145/2998181.2998219
Source DB: PubMed Journal: CSCW Conf Comput Support Coop Work