CLDec 16, 2022

Check-worthy Claim Detection across Topics for Automated Fact-checking

arXiv:2212.08514v16 citationsh-index: 43
Originality Incremental advance
AI Analysis

This addresses a domain-specific challenge in automated fact-checking by improving cross-topic claim detection, though it is incremental as it builds on existing methods for a known bottleneck.

The paper tackles the problem of detecting check-worthy claims across different topics in automated fact-checking, proposing the AraCWA model with few-shot learning and data augmentation, which achieves substantial improvements on a dataset of Arabic tweets across 14 topics.

An important component of an automated fact-checking system is the claim check-worthiness detection system, which ranks sentences by prioritising them based on their need to be checked. Despite a body of research tackling the task, previous research has overlooked the challenging nature of identifying check-worthy claims across different topics. In this paper, we assess and quantify the challenge of detecting check-worthy claims for new, unseen topics. After highlighting the problem, we propose the AraCWA model to mitigate the performance deterioration when detecting check-worthy claims across topics. The AraCWA model enables boosting the performance for new topics by incorporating two components for few-shot learning and data augmentation. Using a publicly available dataset of Arabic tweets consisting of 14 different topics, we demonstrate that our proposed data augmentation strategy achieves substantial improvements across topics overall, where the extent of the improvement varies across topics. Further, we analyse the semantic similarities between topics, suggesting that the similarity metric could be used as a proxy to determine the difficulty level of an unseen topic prior to undertaking the task of labelling the underlying sentences.

Foundations

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