ContextClaim: A Context-Driven Paradigm for Verifiable Claim Detection
Yufeng Li, Rrubaa Panchendrarajan, Arkaitz Zubiaga

TL;DR
This paper introduces ContextClaim, a new paradigm that enhances verifiable claim detection by retrieving and utilizing relevant external knowledge from Wikipedia to improve classification accuracy.
Contribution
It proposes a context-driven approach that incorporates entity extraction and knowledge retrieval to improve verifiable claim detection over existing text-only methods.
Findings
Context augmentation improves claim detection accuracy in some domains.
The effectiveness of context retrieval varies across models and settings.
Human evaluation and error analysis provide insights into when context helps.
Abstract
Verifiable claim detection asks whether a claim expresses a factual statement that can, in principle, be assessed against external evidence. As an early filtering stage in automated fact-checking, it plays an important role in reducing the burden on downstream verification components. However, existing approaches to claim detection, whether based on check-worthiness or verifiability, rely solely on the claim text itself. This is a notable limitation for verifiable claim detection in particular, where determining whether a claim is checkable may benefit from knowing what entities and events it refers to and whether relevant information exists to support verification. Inspired by the established role of evidence retrieval in later-stage claim verification, we propose Context-Driven Claim Detection (ContextClaim), a paradigm that advances retrieval to the detection stage. ContextClaim…
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