Digital footprints: Using WiFi probe and locational data to analyze human mobility trajectories in cities

Computers, Environment and Urban Systems - Tập 72 - Trang 4-12 - 2018
Martin Traunmueller1, Nicholas E. Johnson2, Awais Malik3, Constantine E. Kontokosta3
1New York University Center for Urban Science & Progress, United States
2University of Warwick & New York University Center for Urban Science & Progress, United States
3Dept. of Civil & Urban Engineering, Center for Urban Science & Progress, United States

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