Martin Hyben


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2024

pdf bib
ExU: AI Models for Examining Multilingual Disinformation Narratives and Understanding their Spread
Jake Vasilakes | Zhixue Zhao | Michal Gregor | Ivan Vykopal | Martin Hyben | Carolina Scarton
Proceedings of the 25th Annual Conference of the European Association for Machine Translation (Volume 2)

Addressing online disinformation requires analysing narratives across languages to help fact-checkers and journalists sift through large amounts of data. The ExU project focuses on developing AI-based models for multilingual disinformation analysis, addressing the tasks of rumour stance classification and claim retrieval. We describe the ExU project proposal and summarise the results of a user requirements survey regarding the design of tools to support fact-checking.