Integrating causal reasoning into automated fact-checking

Rebboud, Youssra; Lisena, Pasquale; Troncy, Raphaël
KNLP 2026, 41st ACM SAC Symposium on Applied Computing, Special Track on Knowledge and Natural Language Processing, 23-27 March 2026, Thessaloniki, Greece

In fact-checking applications, a common reason to reject a claim is to detect the presence of erroneous cause-effect relationships between the events at play. However, current automated fact-checking methods lack dedicated causal-based reasoning, potentially missing a valuable opportunity for semantically rich explainability. To address this gap, we propose a methodology that combines event relation extraction, semantic similarity computation, and rule-based reasoning to detect logical inconsistencies between chains of events mentioned in a claim and in an evidence. Evaluated on two factchecking datasets, this method establishes the first baseline for integrating fine-grained causal event relationships into fact-checking and enhance explainability of verdict prediction. 


DOI
HAL
Type:
Conférence
City:
Thessaloniki
Date:
2026-03-23
Department:
Data Science
Eurecom Ref:
8542
Copyright:
Creative Commons Attribution 4.0 License (CC BY-SA)

PERMALINK : https://www.eurecom.fr/publication/8542