2021
DOI: 10.48550/arxiv.2111.07819
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Testing the Generalization of Neural Language Models for COVID-19 Misinformation Detection

Jan Philip Wahle,
Nischal Ashok,
Terry Ruas
et al.

Abstract: A drastic rise in potentially life-threatening misinformation has been a by-product of the COVID-19 pandemic. Computational support to identify false information within the massive body of data on the topic is crucial to prevent harm. Researchers proposed many methods for flagging online misinformation related to COVID-19. However, these methods predominantly target specific content types (e.g., news) or platforms (e.g., Twitter). The methods' capabilities to generalize were largely unclear so far. We evaluate… Show more

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