Exposure Density and Neighborhood Disparities in COVID-19 Infection Risk: Using Large-scale Geolocation Data to Understand Burdens on Vulnerable Communities
Boyeong Hong, Bartosz Bonczak, Arpit Gupta, Lorna Thorpe, and, Constantine E. Kontokosta

TL;DR
This study introduces a novel method to quantify neighborhood activity and exposure density using geolocation data, revealing disparities in social distancing and COVID-19 infection risks across different communities.
Contribution
It develops a high-resolution, land use-specific activity measurement approach and analyzes neighborhood disparities in social distancing and infection outcomes.
Findings
Distinct activity patterns before and after COVID-19 onset.
Variation in exposure density impacts infection risk.
Disparities linked to socioeconomic and demographic factors.
Abstract
This study develops a new method to quantify neighborhood activity levels at high spatial and temporal resolutions and test whether, and to what extent, behavioral responses to social distancing policies vary with socioeconomic and demographic characteristics. We define exposure density as a measure of both the localized volume of activity in a defined area and the proportion of activity occurring in non-residential and outdoor land uses. We utilize this approach to capture inflows/outflows of people as a result of the pandemic and changes in mobility behavior for those that remain. First, we develop a generalizable method for assessing neighborhood activity levels by land use type using smartphone geolocation data over a three-month period covering more than 12 million unique users within the Greater New York area. Second, we measure and analyze disparities in community social…
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Taxonomy
TopicsCOVID-19 epidemiological studies · Health disparities and outcomes · Urban, Neighborhood, and Segregation Studies
