Authors
Manoranjan Dash, Hai Long Nguyen, Hong Cao, Ghim Eng Yap, Minh Nhut Nguyen, Xiaoli Li, Shonali Priyadarsini Krishnaswamy, James Decraene, Spiros Antonatos, Yue Wang, Dang The Anh, Amy Shi-Nash
Publication date
2014/7/14
Conference
Mobile Data Management (MDM), 2014 IEEE 15th International Conference on
Volume
2
Pages
37-42
Publisher
IEEE
Description
We present methods to predict and validate home and work places of anonymized users using their mobile network data. Knowledge of home and work place of a user is essential in order to find his (and overall population) mobility profiles. There are many methods that predict home and work places using GPS data. But unlike GPS data, mobile network data using GSM do not provide the exact location of a phone event. We use a novel criterion that combines an extracted feature from mobile data (i.e., Inactivity - no phone event for a given period of time) with open source data about location category % (i.e., Streetdirectory.com) to predict home location. Results show that the new criterion gives better prediction accuracy than inactivity alone. We predict work place using the idea that one goes to her work place on most of the weekdays but rarely on weekends. We validate our methods by comparing against the …
Total citations
20152016201720182019202020217342434
Scholar articles
M Dash, HL Nguyen, C Hong, GE Yap, MN Nguyen… - 2014 IEEE 15th International Conference on Mobile …, 2014