KDD2022

Ask to Know More: Generating Counterfactual Explanations for Fake Claims

Shih-Chieh Dai, Yi-Li Hsu, Aiping Xiong, Lun-Wei Ku

18 citations

Abstract

Automated fact-checking systems have been proposed that quickly provide veracity prediction at scale to mitigate the negative influence of fake news on people and on public opinion. However, most studies focus on veracity classifiers of those systems, which merely predict the truthfulness of news articles. We posit that effective fact checking also relies on people's understanding of the predictions. In this paper, we propose elucidating fact-checking predictions using counterfactual explanations to help people understand why a specific piece of news was identified as fake.