Understanding individual mobility patterns from urban sensing data: A mobile phone trace example

Francesco Calabrese1,2, Mi Diao3,4, Giusy Di Lorenzo1,2, Joseph Ferreira5, Carlo Ratti5,2
1IBM Research, Dublin, Ireland
2Senseable City Lab, Massachusetts Institute of Technology, USA
3Department of Real Estate, National University of Singapore, Singapore
4Institute of Real Estate Studies, National University of Singapore, Singapore
5Department of Urban Studies and Planning, Massachusetts Institute of Technology, USA

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