2012
Conference article  Open Access

Identifying users profiles from mobile calls habits

Furletti B., Gabrielli L., Rinzivillo S., Renso C.

Mobile phone data  User profiles  Data mining 

The huge quantity of positioning data registered by our mobile phones stimulates several research questions, mainly originating from the combination of this huge quantity of data with the extreme heterogeneity of the tracked user and the low granularity of the data. We propose a methodology to partition the users tracked by GSM phone calls into profiles like resident, commuters, in transit and tourists. The methodology analyses the phone calls with a combination of top-down and bottom up techniques where the top-down phase is based on a sequence of queries that identify some behaviors. The bottom-up is a machine learning phase to find groups of similar call behavior, thus refining the previous step. The integration of the two steps results in the partitioning of mobile traces into these four user categories that can be deeper analyzed, for example to understand the tourist movements in city or the traffic effects of commuters. An experiment on the identification of user profiles on a real dataset collecting call records from one month in the city of Pisa illustrates the methodology.

Source: ACM SIGKDD International Workshop on Urban Computing, pp. 17–24, Beijing, China, 12-16 August 2012

Publisher: ACM Press, New York, USA


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BibTeX entry
@inproceedings{oai:it.cnr:prodotti:276204,
	title = {Identifying users profiles from mobile calls habits},
	author = {Furletti B. and Gabrielli L. and Rinzivillo S. and Renso C.},
	publisher = {ACM Press, New York, USA},
	doi = {10.1145/2346496.2346500},
	booktitle = {ACM SIGKDD International Workshop on Urban Computing, pp. 17–24, Beijing, China, 12-16 August 2012},
	year = {2012}
}

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