DocumentCode
2908331
Title
Next place prediction by understanding mobility patterns
Author
Dash, Manoranjan ; Kee Kiat Koo ; Gomes, Joao Bartolo ; Krishnaswamy, Shonali Priyadarsini ; Rugeles, Daniel ; Shi-Nash, Amy
Author_Institution
Inst. for Infocomm Res., A*Star, Singapore, Singapore
fYear
2015
fDate
23-27 March 2015
Firstpage
469
Lastpage
474
Abstract
As technology to connect people across the world is advancing, there should be corresponding advancement in taking advantage of data that is generated out of such connection. To that end, next place prediction is an important problem for mobility data. In this paper we propose several models using dynamic Bayesian network (DBN). Idea behind development of these models come from typical daily mobility patterns a user have. Three features (location, day of the week (DoW), and time of the day (ToD)) and their combinations are used to develop these models. Knowing that not all models work well for all situations, we developed three combined models using least entropy, highest probability and ensemble. Extensive performance study is conducted to compare these models over two different mobility data sets: a CDR data and Nokia mobile data which is based on GPS. Results show that least entropy and highest probability DBNs perform the best.
Keywords
belief networks; entropy; feature extraction; pattern recognition; probability; CDR data; Nokia mobile data; ToD; call detail records; day of the week feature; dynamic Bayesian network; ensemble; least entropy; location feature; mobility patterns; next place prediction; probability; time of the day feature; Accuracy; Data models; Entropy; Mathematical model; Poles and towers; Predictive models; Trajectory;
fLanguage
English
Publisher
ieee
Conference_Titel
Pervasive Computing and Communication Workshops (PerCom Workshops), 2015 IEEE International Conference on
Conference_Location
St. Louis, MO
Type
conf
DOI
10.1109/PERCOMW.2015.7134083
Filename
7134083
Link To Document