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Multilingual Previously Fact-Checked Claim Retrieval

A new multilingual dataset called MultiClaim is introduced to facilitate the retrieval of previously fact-checked claims, and the dataset is used to evaluate the performance of both unsupervised and supervised methods in claim retrieval.

Year
2023
Venue
arXiv 2023
Authors
10
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arxiv.org/abs/2305.07991v2ARXIV-DEFAULT
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Abstract

Fact-checkers are often hampered by the sheer amount of online content that needs to be fact-checked. NLP can help them by retrieving already existing fact-checks relevant to the content being investigated. This paper introduces a new multilingual dataset -- MultiClaim -- for previously fact-checked claim retrieval. We collected 28k posts in 27 languages from social media, 206k fact-checks in 39 languages written by professional fact-checkers, as well as 31k connections between these two groups. This is the most extensive and the most linguistically diverse dataset of this kind to date. We evaluated how different unsupervised methods fare on this dataset and its various dimensions. We show that evaluating such a diverse dataset has its complexities and proper care needs to be taken before interpreting the results. We also evaluated a supervised fine-tuning approach, improving upon the unsupervised method significantly.

Authors

10