DocumentCode
2983706
Title
Mining User Mobility Features for Next Place Prediction in Location-Based Services
Author
Noulas, Anastasios ; Scellato, Salvatore ; Lathia, N. ; Mascolo, Cecilia
Author_Institution
Comput. Lab., Univ. of Cambridge, Cambridge, UK
fYear
2012
fDate
10-13 Dec. 2012
Firstpage
1038
Lastpage
1043
Abstract
Mobile location-based services are thriving, providing an unprecedented opportunity to collect fine grained spatio-temporal data about the places users visit. This multi-dimensional source of data offers new possibilities to tackle established research problems on human mobility, but it also opens avenues for the development of novel mobile applications and services. In this work we study the problem of predicting the next venue a mobile user will visit, by exploring the predictive power offered by different facets of user behavior. We first analyze about 35 million check-ins made by about 1 million Foursquare users in over 5 million venues across the globe, spanning a period of five months. We then propose a set of features that aim to capture the factors that may drive users´ movements. Our features exploit information on transitions between types of places, mobility flows between venues, and spatio-temporal characteristics of user check-in patterns. We further extend our study combining all individual features in two supervised learning models, based on linear regression and M5 model trees, resulting in a higher overall prediction accuracy. We find that the supervised methodology based on the combination of multiple features offers the highest levels of prediction accuracy: M5 model trees are able to rank in the top fifty venues one in two user check-ins, amongst thousands of candidate items in the prediction list.
Keywords
data mining; learning (artificial intelligence); regression analysis; social networking (online); trees (mathematics); user interfaces; Foursquare user; M5 model trees; data collection; data multidimensional source; fine grained spatio-temporal data; human mobility; information exploitation; linear regression; location-based services; mobile application; mobile service; next place prediction; prediction accuracy; supervised learning model; user behavior; user check-in; user mobility feature mining; Accuracy; Cities and towns; Filtering; Humans; Mobile communication; Predictive models; Supervised learning; data mining; human mobility; location-based services;
fLanguage
English
Publisher
ieee
Conference_Titel
Data Mining (ICDM), 2012 IEEE 12th International Conference on
Conference_Location
Brussels
ISSN
1550-4786
Print_ISBN
978-1-4673-4649-8
Type
conf
DOI
10.1109/ICDM.2012.113
Filename
6413812
Link To Document