Simple open stance classification for rumour analysis

A Aker, L Derczynski, K Bontcheva - arXiv preprint arXiv:1708.05286, 2017 - arxiv.org
arXiv preprint arXiv:1708.05286, 2017arxiv.org
Stance classification determines the attitude, or stance, in a (typically short) text. The task
has powerful applications, such as the detection of fake news or the automatic extraction of
attitudes toward entities or events in the media. This paper describes a surprisingly simple
and efficient classification approach to open stance classification in Twitter, for rumour and
veracity classification. The approach profits from a novel set of automatically identifiable
problem-specific features, which significantly boost classifier accuracy and achieve above …
Stance classification determines the attitude, or stance, in a (typically short) text. The task has powerful applications, such as the detection of fake news or the automatic extraction of attitudes toward entities or events in the media. This paper describes a surprisingly simple and efficient classification approach to open stance classification in Twitter, for rumour and veracity classification. The approach profits from a novel set of automatically identifiable problem-specific features, which significantly boost classifier accuracy and achieve above state-of-the-art results on recent benchmark datasets. This calls into question the value of using complex sophisticated models for stance classification without first doing informed feature extraction.
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