Title
User exercise pattern prediction through mobile sensing
Abstract
Even though the health benefits of regular exercising are well known, an average person has difficulty maintaining physical activity on a regular basis. One of the main reasons for this is lack of motivation. With their increasing ubiquity, wireless devices and smartphones and their sensing capabilities now can be involved in solving this issue. Many mobile applications have been developed with which people are able to keep track of their exercises, become more aware of their physical condition, and be more motivated. The collected data is also a good source for researchers in understanding the exercise patterns and the main factors influencing people to exercise. Understanding those factors will allow better applications to be built, which helps motivate people. In this work, we quantitatively analyze a dataset collected from over 10,000 users. To better understand the user exercise patterns, we identify a set of factors influencing their exercise patterns. Based on these insights, we develop a prediction model to predict users' future exercise activities.
Year
DOI
Venue
2014
10.4108/icst.mobicase.2014.257797
Mobile Computing, Applications and Services
Keywords
Field
DocType
bioinformatics,biological techniques,biomechanics,body sensor networks,health care,smart phones,exercise activities,exercise pattern prediction,health benefits,mobile applications,mobile sensing,physical activity,physical condition,regular exercising,sensing capabilities,smartphones,wireless devices
Mobile sensing,Wireless,Computer science,Computer security,Multimedia
Conference
Citations 
PageRank 
References 
0
0.34
3
Authors
4
Name
Order
Citations
PageRank
Georgi Kotsev100.34
Le T. Nguyen221712.04
Ming Zeng31418.45
Jie Zhang44715.01