Location inference on social media data for agile monitoring of public health crises: An application to opioid use and abuse during the Covid-19 pandemic
Angela E. Kilby, Charlie Denhart

TL;DR
This paper develops a geolocation inference method for social media users to monitor opioid use during Covid-19, revealing how state policies impact opioid-related behaviors and health outcomes.
Contribution
It introduces an unsupervised approach combining NER, geocoding, clustering, and heuristics to infer user locations from Reddit data, enabling real-time public health monitoring.
Findings
State-level location inference accuracy is 63%.
Economic reopening policies correlate with different opioid use patterns.
Geospatial social media data supports agile public health crisis monitoring.
Abstract
The Covid-19 pandemic has intersected with the opioid epidemic to create a unique public health crisis, with the health and economic consequences of the virus and associated lockdowns compounding pre-existing social and economic stressors associated with rising opioid and heroin use and abuse. In order to better understand these interlocking crises, we use social media data to extract qualitative and quantitative insights on the experiences of opioid users during the Covid-19 pandemic. In particular, we use an unsupervised learning approach to create a rich geolocated data source for public health surveillance and analysis. To do this we first infer the location of 26,000 Reddit users that participate in opiate-related sub-communities (subreddits) by combining named entity recognition, geocoding, density-based clustering, and heuristic methods. Our strategy achieves 63 percent accuracy…
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Taxonomy
TopicsData-Driven Disease Surveillance · HIV, Drug Use, Sexual Risk · Human Mobility and Location-Based Analysis
