Human mobility: Models and applications

@article{BarbosaFilho2018HumanMM,
  title={Human mobility: Models and applications},
  author={Hugo Barbosa-Filho and Marc Barthelemy and Gourab Ghoshal and Charlotte James and Maxime Lenormand and Thomas Louail and Ronaldo Parente de Menezes and Jos{\'e} J. Ramasco and Filippo Simini and Marcello Tomasini},
  journal={Physics Reports},
  year={2018},
  volume={734},
  pages={1-74}
}
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