DocumentCode
1754916
Title
Time-Clustering-Based Place Prediction for Wireless Subscribers
Author
Gatmir-Motahari, Sara ; Hui Zang ; Reuther, Phyllis
Author_Institution
Sprint Adv. Analytics Lab., Burlingame, CA, USA
Volume
21
Issue
5
fYear
2013
fDate
Oct. 2013
Firstpage
1436
Lastpage
1446
Abstract
Many of today´s applications such as cellular network management, prediction and control of the spread of biological and mobile viruses, etc., depend on the modeling and prediction of human locations. However, having widespread wireless localization technology, such as pervasive cell-tower/GPS location estimation available for only the last few years, many factors that impact human mobility patterns remain underresearched. Furthermore, many industries including telecom providers are still in need of low-cost and simple location/place prediction methods that can be implemented on a large scale. In this paper, we focus on “temporal factors” and demonstrate that they significantly impact randomness, size, and probability distribution of people´s movements. We also use this information to make simple and inexpensive prediction models for subscribers´ visited places. We monitored individuals for a month and divided days and hours into segments for each user to obtain probability distribution of their places for each segment of time intervals and observed major improvement in future “time-based” predictions of their location compared to when temporal factors were not considered. In addition to quantifying the improvement in place prediction, we show that significant improvements can actually be achieved through an intuitive division of time intervals with no added computational complexity.
Keywords
cellular radio; mobility management (mobile radio); probability; biological viruses; cellular network management; computational complexity; human mobility patterns; mobile viruses; place prediction; probability distribution; time-clustering-based place prediction; wireless localization technology; wireless subscribers; Entropy; Estimation; Global Positioning System; Humans; Probability distribution; Trajectory; Wireless communication; Cellular networks; location prediction; mobile communication; prediction algorithms; wireless networks;
fLanguage
English
Journal_Title
Networking, IEEE/ACM Transactions on
Publisher
ieee
ISSN
1063-6692
Type
jour
DOI
10.1109/TNET.2012.2225443
Filename
6377243
Link To Document