PoxVerifi: An Information Verification System to Combat Monkeypox Misinformation
Akaash Kolluri, Kami Vinton, and Dhiraj Murthy

TL;DR
PoxVerifi is an open-source tool that uses machine learning and community input to verify monkeypox-related claims, aiming to combat misinformation and support public health efforts.
Contribution
It introduces a novel, extensible verification system combining ML classification, community ratings, and claim aggregation for monkeypox misinformation.
Findings
Achieved 96% accuracy with BERT-based classifier
Created a corpus of 225 rated claims
Developed a Chrome extension for real-time claim verification
Abstract
Following recent outbreaks, monkeypox-related misinformation continues to rapidly spread online. This negatively impacts response strategies and disproportionately harms LGBTQ+ communities in the short-term, and ultimately undermines the overall effectiveness of public health responses. In an attempt to combat monkeypox-related misinformation, we present PoxVerifi, an open-source, extensible tool that provides a comprehensive approach to assessing the accuracy of monkeypox related claims. Leveraging information from existing fact checking sources and published World Health Organization (WHO) information, we created an open-sourced corpus of 225 rated monkeypox claims. Additionally, we trained an open-sourced BERT-based machine learning model for specifically classifying monkeypox information, which achieved 96% cross-validation accuracy. PoxVerifi is a Google Chrome browser extension…
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Taxonomy
TopicsMisinformation and Its Impacts · Viral Infections and Outbreaks Research · Poxvirus research and outbreaks
