English

Learning to Generate and Evaluate Fact-checking Explanations with Transformers

Computation and Language 2024-10-22 v1 Artificial Intelligence Human-Computer Interaction

Abstract

In an era increasingly dominated by digital platforms, the spread of misinformation poses a significant challenge, highlighting the need for solutions capable of assessing information veracity. Our research contributes to the field of Explainable Artificial Antelligence (XAI) by developing transformer-based fact-checking models that contextualise and justify their decisions by generating human-accessible explanations. Importantly, we also develop models for automatic evaluation of explanations for fact-checking verdicts across different dimensions such as \texttt{(self)-contradiction}, \texttt{hallucination}, \texttt{convincingness} and \texttt{overall quality}. By introducing human-centred evaluation methods and developing specialised datasets, we emphasise the need for aligning Artificial Intelligence (AI)-generated explanations with human judgements. This approach not only advances theoretical knowledge in XAI but also holds practical implications by enhancing the transparency, reliability and users' trust in AI-driven fact-checking systems. Furthermore, the development of our metric learning models is a first step towards potentially increasing efficiency and reducing reliance on extensive manual assessment. Based on experimental results, our best performing generative model \textsc{ROUGE-1} score of 47.77, demonstrating superior performance in generating fact-checking explanations, particularly when provided with high-quality evidence. Additionally, the best performing metric learning model showed a moderately strong correlation with human judgements on objective dimensions such as \texttt{(self)-contradiction and \texttt{hallucination}, achieving a Matthews Correlation Coefficient (MCC) of around 0.7.}

Keywords

Cite

@article{arxiv.2410.15669,
  title  = {Learning to Generate and Evaluate Fact-checking Explanations with Transformers},
  author = {Darius Feher and Abdullah Khered and Hao Zhang and Riza Batista-Navarro and Viktor Schlegel},
  journal= {arXiv preprint arXiv:2410.15669},
  year   = {2024}
}

Comments

Forthcoming in Engineering Applications of Artificial Intelligence

R2 v1 2026-06-28T19:29:10.063Z