Unknown claims: Generation of fact-checking training examples from unstructured and structured data

Bussotti, Jean-Flavien; Ragazzi, Luca; Frisoni, Giacomo; Moro, Gianluca; Papotti, Paolo
EMNLP 2024, Conference on Empirical Methods in Natural Language Processing, 12-16 November 2024, Miami, FL, USA

Computational fact-checking (FC) relies on supervised models to verify claims based on given evidence, requiring a resource-intensive process to annotate large volumes of training data. We introduce UNOWN, a novel framework that generates training instances for FC systems automatically using both textual and tabular content. UNOWN selects relevant evidence and generates supporting and refuting claims with advanced negation artifacts. Designed to be flexible, UNOWN accommodates various strategies for evidence selection and claim generation, offering unparalleled adaptability. We comprehensively evaluate UNOWN on both text-only and table+text benchmarks, including FEVEROUS, SCIFACT, and MMFC, a new multi-modal FC dataset. Our results prove that UNOWN examples are of comparable quality to expert-labeled data, even enabling models to achieve up to 5% higher accuracy. The code, data, and models are available at https:
//github.com/disi-unibo-nlp/unown

HAL
Type:
Conférence
City:
Miami
Date:
2024-11-12
Department:
Data Science
Eurecom Ref:
7947
Copyright:
Copyright ACL. Personal use of this material is permitted. The definitive version of this paper was published in EMNLP 2024, Conference on Empirical Methods in Natural Language Processing, 12-16 November 2024, Miami, FL, USA and is available at :

PERMALINK : https://www.eurecom.fr/publication/7947