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Mining Google and Apple mobility data: temporal anatomy for COVID-19 social distancing
by
Cacciapaglia, Giacomo
, Sannino, Francesco
, Cot, Corentin
in
639/705/1046
/ 692/699
/ Apples
/ Cell Phone - statistics & numerical data
/ Cell Phone - trends
/ Cell Phone Use - statistics & numerical data
/ Cell Phone Use - trends
/ Coronaviruses
/ COVID-19
/ COVID-19 - epidemiology
/ COVID-19 - prevention & control
/ COVID-19 - transmission
/ Data Mining - methods
/ Europe - epidemiology
/ High Energy Physics - Phenomenology
/ Humanities and Social Sciences
/ Humans
/ Mobile Applications - statistics & numerical data
/ Mobile Applications - trends
/ Mobility
/ multidisciplinary
/ Pandemics
/ Physical Distancing
/ Physics
/ Quarantine - statistics & numerical data
/ Quarantine - trends
/ SARS-CoV-2 - isolation & purification
/ Science
/ Science (multidisciplinary)
/ Social distancing
/ United States - epidemiology
2021
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Mining Google and Apple mobility data: temporal anatomy for COVID-19 social distancing
by
Cacciapaglia, Giacomo
, Sannino, Francesco
, Cot, Corentin
in
639/705/1046
/ 692/699
/ Apples
/ Cell Phone - statistics & numerical data
/ Cell Phone - trends
/ Cell Phone Use - statistics & numerical data
/ Cell Phone Use - trends
/ Coronaviruses
/ COVID-19
/ COVID-19 - epidemiology
/ COVID-19 - prevention & control
/ COVID-19 - transmission
/ Data Mining - methods
/ Europe - epidemiology
/ High Energy Physics - Phenomenology
/ Humanities and Social Sciences
/ Humans
/ Mobile Applications - statistics & numerical data
/ Mobile Applications - trends
/ Mobility
/ multidisciplinary
/ Pandemics
/ Physical Distancing
/ Physics
/ Quarantine - statistics & numerical data
/ Quarantine - trends
/ SARS-CoV-2 - isolation & purification
/ Science
/ Science (multidisciplinary)
/ Social distancing
/ United States - epidemiology
2021
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Mining Google and Apple mobility data: temporal anatomy for COVID-19 social distancing
by
Cacciapaglia, Giacomo
, Sannino, Francesco
, Cot, Corentin
in
639/705/1046
/ 692/699
/ Apples
/ Cell Phone - statistics & numerical data
/ Cell Phone - trends
/ Cell Phone Use - statistics & numerical data
/ Cell Phone Use - trends
/ Coronaviruses
/ COVID-19
/ COVID-19 - epidemiology
/ COVID-19 - prevention & control
/ COVID-19 - transmission
/ Data Mining - methods
/ Europe - epidemiology
/ High Energy Physics - Phenomenology
/ Humanities and Social Sciences
/ Humans
/ Mobile Applications - statistics & numerical data
/ Mobile Applications - trends
/ Mobility
/ multidisciplinary
/ Pandemics
/ Physical Distancing
/ Physics
/ Quarantine - statistics & numerical data
/ Quarantine - trends
/ SARS-CoV-2 - isolation & purification
/ Science
/ Science (multidisciplinary)
/ Social distancing
/ United States - epidemiology
2021
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Mining Google and Apple mobility data: temporal anatomy for COVID-19 social distancing
Journal Article
Mining Google and Apple mobility data: temporal anatomy for COVID-19 social distancing
2021
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Overview
We employ the Google and Apple mobility data to identify, quantify and classify different degrees of social distancing and characterise their imprint on the first wave of the COVID-19 pandemic in Europe and in the United States. We identify the period of enacted social distancing via Google and Apple data, independently from the political decisions. Our analysis allows us to classify different shades of social distancing measures for the first wave of the pandemic. We observe a strong decrease in the infection rate occurring two to five weeks after the onset of mobility reduction. A universal time scale emerges, after which social distancing shows its impact. We further provide an actual measure of the impact of social distancing for each region, showing that the effect amounts to a reduction by 20–40% in the infection rate in Europe and 30–70% in the US.
Publisher
Nature Publishing Group UK,Nature Publishing Group,Nature Portfolio
Subject
/ 692/699
/ Apples
/ Cell Phone - statistics & numerical data
/ Cell Phone Use - statistics & numerical data
/ COVID-19
/ COVID-19 - prevention & control
/ High Energy Physics - Phenomenology
/ Humanities and Social Sciences
/ Humans
/ Mobile Applications - statistics & numerical data
/ Mobile Applications - trends
/ Mobility
/ Physics
/ Quarantine - statistics & numerical data
/ SARS-CoV-2 - isolation & purification
/ Science
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