Skip to main content
SHARE
Publication

Characterizing the Spread of COVID-19 from Human Mobility Patterns and SocioDemographic Indicators...

by Avipsa Roy, Bandana Kar
Publication Type
Conference Paper
Journal Name
Proceedings of 3nd ACM SIGSPATIAL International Workshop on Advancements in Resilient and Intelligent Cities
Book Title
ARIC '20: Proceedings of the 3rd ACM SIGSPATIAL International Workshop on Advances in Resilient and Intelligent Cities
Publication Date
Page Numbers
39 to 48
Publisher Location
District of Columbia, United States of America
Conference Name
3nd ACM SIGSPATIAL International Workshop on Advancements in Resilient and Intelligent Cities
Conference Location
Virtual, Washington, United States of America
Conference Sponsor
ACM
Conference Date
-

Mobility is an indicator of human movement through space and time. With the increasing availability of geolocated data (from GPS, accelerometers, etc.), it is now possible to examine individual as well as group human mobility patterns. Human mobility is influenced by both intrinsic (i.e. personal motivations) and extrinsic (i.e., events like natural hazards or a pandemic like the COVID-19) factors. However, the intricate relationships between human mobility patterns and sociodemographic characteristics in the context of a pandemic are yet to be fully explored. Our goal is to overcome this gap by using human mobility data at the census block group level from mobile phones and combining those with social vulnerability indicators to examine the overall spread of COVID-19 at local spatial scales. We used 585,878 weekly visits to 37,871 points of interests (POIs) from Safegraph to quantify mobility indices and social distancing metrics in 2,820 census block groups in the city of Los Angeles (LA) - before and during lockdown as well as during the phase1 and phase 2 reopening. Finally, using supervised machine learning algorithms, we classified the census block groups in LA into High, Medium and Low categories that represented the vulnerability of these block groups based on the cumulative number of occurrences of COVID-19 cases till July 24, 2020. Our results indicate that the tree-based classifiers performed well in comparison to the Support Vector Machines and Multinomial Logit models. Gradient Boosting had the highest classification accuracy of 97.4% COVID-19 with an AUC score of 0.987. The block groups with high COVID-19 cases also had a high concentration of socially vulnerable populations, high human mobility index and a low social distancing index.