ICPR 2024 Competition on Multilingual Claim-Span Identification
A lot of claims are made in social media posts, which may contain misinformation or fake news. Hence, it is crucial to identify claims as a first step towards claim verification. Given the huge number of social media posts, the task of identifying claims needs to be automated. This competition deals...
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Zusammenfassung: | A lot of claims are made in social media posts, which may contain
misinformation or fake news. Hence, it is crucial to identify claims as a first
step towards claim verification. Given the huge number of social media posts,
the task of identifying claims needs to be automated. This competition deals
with the task of 'Claim Span Identification' in which, given a text, parts /
spans that correspond to claims are to be identified. This task is more
challenging than the traditional binary classification of text into claim or
not-claim, and requires state-of-the-art methods in Pattern Recognition,
Natural Language Processing and Machine Learning. For this competition, we used
a newly developed dataset called HECSI containing about 8K posts in English and
about 8K posts in Hindi with claim-spans marked by human annotators. This paper
gives an overview of the competition, and the solutions developed by the
participating teams. |
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DOI: | 10.48550/arxiv.2411.19579 |