Detecting Early-warning signals in Time Series of Visits to Points of Interests to Examine Population Response to COVID -19 Pandemic
Qingchun Li, Zhiyuan Tang, Natalie Coleman, Ali Mostafavi

TL;DR
This study detects early-warning signals in population visit data to points of interest across US cities, revealing responses to COVID-19 before official policies and highlighting the importance of early detection for policy planning.
Contribution
It introduces a method to identify early-warning signals in urban population behavior, specifically using autocorrelation and standard deviation in POI visit time series during a pandemic.
Findings
Early-warning signals appeared before shelter-in-place orders.
Signals from essential POIs appeared earlier than non-essential ones.
Delayed responses correlated with smaller decreases in visits.
Abstract
The objective of this paper is to examine population response to COVID-19 and associated policy interventions through detecting early-warning signals in time series of visits to points of interest (POIs). Complex systems, such as cities, demonstrate early-warning signals when they approach phase transitions responding to external perturbation, including crises, policy changes, and human behavior changes. In urban systems, population visits to POIs represent a state in the complex systems that are cities. These states may undergo phase transitions due to population response to pandemic risks and intervention policies. In this study, we conducted early-warning signal detection on population visits to POIs to examine population response to pandemic risks. We examined two early-warning signals, the increase of autocorrelation at-lag-1 and standard deviation, in time series of population…
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Taxonomy
TopicsEcosystem dynamics and resilience · Mental Health Research Topics · COVID-19 epidemiological studies
