Global Data Science Project for COVID-19
- URL: http://arxiv.org/abs/2006.05573v2
- Date: Tue, 3 Aug 2021 08:47:27 GMT
- Title: Global Data Science Project for COVID-19
- Authors: Toyotaro Suzumura, Dario Garcia-Gasulla, Sergio Alvarez Napagao, Irene
Li, Hiroshi Maruyama, Hiroki Kanezashi, Raquel P'erez-Arnal, Kunihiko
Miyoshi, Euma Ishii, Keita Suzuki, Sayaka Shiba, Mariko Kurokawa, Yuta
Kanzawa, Naomi Nakagawa, Masatoshi Hanai, Yixin Li and Tianxiao Li
- Abstract summary: We quantitatively analysed the multifaceted impacts of the COVID-19 pandemic on our societies.
People's mobility has changed significantly due to the implementation of travel restriction and quarantine measurements.
We identified the increased concern for mental health through the analysis of posts on social networking services such as Twitter and Instagram.
- Score: 6.25316504756833
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: This paper aims at providing the summary of the Global Data Science Project
(GDSC) for COVID-19. as on May 31 2020. COVID-19 has largely impacted on our
societies through both direct and indirect effects transmitted by the policy
measures to counter the spread of viruses. We quantitatively analysed the
multifaceted impacts of the COVID-19 pandemic on our societies including
people's mobility, health, and social behaviour changes. People's mobility has
changed significantly due to the implementation of travel restriction and
quarantine measurements. Indeed, the physical distance has widened at
international (cross-border), national and regional level. At international
level, due to the travel restrictions, the number of international flights has
plunged overall at around 88 percent during March. In particular, the number of
flights connecting Europe dropped drastically in mid of March after the United
States announced travel restrictions to Europe and the EU and participating
countries agreed to close borders, at 84 percent decline compared to March
10th. Similarly, we examined the impacts of quarantine measures in the major
city: Tokyo (Japan), New York City (the United States), and Barcelona (Spain).
Within all three cities, we found the significant decline in traffic volume. We
also identified the increased concern for mental health through the analysis of
posts on social networking services such as Twitter and Instagram. Notably, in
the beginning of April 2020, the number of post with #depression on Instagram
doubled, which might reflect the rise in mental health awareness among
Instagram users. Besides, we identified the changes in a wide range of people's
social behaviors, as well as economic impacts through the analysis of Instagram
data and primary survey data.
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