PANACEA: an automated misinformation detection system on COVID-19

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Zhao, Runcong
Arana-Catania, Miguel
Zhu, Lixing
Kochkina, Elena
Gui, Lin
Zubiaga, Arkaitz
Procter, Rob
Liakata, Maria
He, Yulan

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Zhao R, Arana-Catania M, Zhu L, et al., (2023) PANACEA: an automated misinformation detection system on COVID-19. In: EACL 2023: The 17th Conference of the European Chapter of the Association for Computational Linguistics, 1-6 May 2023, Dubrovnik, Croatia

Abstract

In this demo, we introduce a web-based misinformation detection system PANACEA on COVID-19 related claims, which has two modules, fact-checking and rumour detection. Our fact-checking module, which is supported by novel natural language inference methods with a self-attention network, outperforms state-ofthe-art approaches. It is also able to give automated veracity assessment and ranked supporting evidence with the stance towards the claim to be checked. In addition, PANACEA adapts the bi-directional graph convolutional networks model, which is able to detect rumours based on comment networks of related tweets, instead of relying on the knowledge base. This rumour detection module assists by warning the users in the early stages when a knowledge base may not be available.

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Attribution 4.0 International

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