Non-Compulsory Measures Sufficiently Reduced Human Mobility in Japan during the COVID-19 Epidemic
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Yoshihide Sekimoto | Kota Tsubouchi | Takahiro Yabe | Satish V Ukkusuri | Naoya Fujiwara | Takayuki Wada | N. Fujiwara | S. Ukkusuri | Y. Sekimoto | T. Yabe | K. Tsubouchi | Takayuki Wada
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