Integrating Causal Reasoning into Automated Fact-Checking
By: Youssra Rebboud, Pasquale Lisena, Raphael Troncy
Potential Business Impact:
Finds fake news by checking event causes.
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 fact-checking datasets, this method establishes the first baseline for integrating fine-grained causal event relationships into fact-checking and enhance explainability of verdict prediction.
Similar Papers
Combining Evidence and Reasoning for Biomedical Fact-Checking
Computation and Language
Checks if health advice is true using science.
Investigating Counterclaims in Causality Extraction from Text
Computation and Language
Helps computers tell if something causes or stops something.
Causal Graph based Event Reasoning using Semantic Relation Experts
Artificial Intelligence
Helps computers understand why things happen.