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Visualizing Social and Behavior Change due to the Outbreak of COVID-19 Using Mobile Phone Location Data.

Takayuki MizunoTakaaki OhnishiTsutomu Watanabe
Published in: New generation computing (2021)
We visualize the rates of stay-home for residents by region using the difference between day-time and night-time populations to detect residential areas, and then observing the numbers of people leaving residential areas. There are issues with measuring stay-home rates by observing numbers of people visiting downtown areas, such as central urban shopping centers and major train stations. The first is that we cannot eliminate the possibility that people will avoid areas being observed and go to other areas. The second is that for people visiting downtown areas, we cannot know where they reside. These issues can be resolved if we quantify the degree of stay-home using the number of people leaving residential areas. There are significant differences in stay-home levels by region throughout Japan. By this visualization, residents of each region can see whether their level of stay-home is adequate or not, and this can provide incentive toward compliance suited to the residents of the region.
Keyphrases
  • healthcare
  • air pollution
  • coronavirus disease
  • sars cov
  • machine learning
  • depressive symptoms
  • deep learning
  • high speed