Sentinel node approach to monitoring online COVID-19 misinformation
Matthew T. Osborne, Samuel S. Malloy, Erik C. Nisbet, Robert M. Bond,, Joseph H. Tien

TL;DR
This study uses network science to track influential Twitter accounts over time, revealing how misinformation about COVID-19 spreads within and across communities, highlighting the public health risks of downplaying the pandemic's severity.
Contribution
Introduces a longitudinal network science approach to identify influential sentinel nodes and analyze misinformation spread across Twitter communities during COVID-19.
Findings
Media preference correlates with misinformation spread.
Conspiracy accounts propagate sensationalist misinformation.
Downplaying COVID-19 severity misinformation is widespread.
Abstract
Understanding how different online communities engage with COVID-19 misinformation is critical for public health response, as misinformation confined to a small, isolated community of users poses a different public health risk than misinformation being consumed by a large population spanning many diverse communities. Here we take a longitudinal approach that leverages tools from network science to study COVID-19 misinformation on Twitter. Our approach provides a means to examine the breadth of misinformation engagement using modest data needs and computational resources. We identify influential accounts from different Twitter communities discussing COVID-19, and follow these `sentinel nodes' longitudinally from July 2020 to January 2021. We characterize sentinel nodes in terms of a linked-media preference score, and use a standardized similarity score to examine alignment of tweets…
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Taxonomy
TopicsMisinformation and Its Impacts · Social Media and Politics · Hate Speech and Cyberbullying Detection
