Coupling mobile phone and social media data: a new approach to understanding urban functions and diurnal patterns
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Wei Tu | Qingquan Li | Yang Yue | Jinzhou Cao | Shih-Lung Shaw | Yang Xu | Xiaomeng Chang | Meng Zhou | Zhensheng Wang | S. Shaw | Qingquan Li | Jinzhou Cao | Wei Tu | Y. Yue | Meng Zhou | Yang Xu | Zhensheng Wang | Xiaomeng Chang
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