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Mama Edha at SemEval-2017 Task 8: Stance Classification with CNN and Rules

2017-08-01SEMEVAL 2017Unverified0· sign in to hype

Marianela Garc{\'\i}a Lozano, Hanna Lilja, Edward Tj{\"o}rnhammar, Maja Karasalo

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Abstract

For the competition SemEval-2017 we investigated the possibility of performing stance classification (support, deny, query or comment) for messages in Twitter conversation threads related to rumours. Stance classification is interesting since it can provide a basis for rumour veracity assessment. Our ensemble classification approach of combining convolutional neural networks with both automatic rule mining and manually written rules achieved a final accuracy of 74.9\% on the competition's test data set for Task 8A. To improve classification we also experimented with data relabeling and using the grammatical structure of the tweet contents for classification.

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