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Classifying Tweet Level Judgements of Rumours in Social Media (1506.00468v2)
Published 1 Jun 2015 in cs.SI, cs.CL, and cs.LG
Abstract: Social media is a rich source of rumours and corresponding community reactions. Rumours reflect different characteristics, some shared and some individual. We formulate the problem of classifying tweet level judgements of rumours as a supervised learning task. Both supervised and unsupervised domain adaptation are considered, in which tweets from a rumour are classified on the basis of other annotated rumours. We demonstrate how multi-task learning helps achieve good results on rumours from the 2011 England riots.