Improved Stance Prediction in a User Similarity Feature Space.

ASONAM '17: Advances in Social Networks Analysis and Mining 2017 Sydney Australia July, 2017(2017)

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摘要
Predicting the stance of social media users on a topic can be challenging, particularly for users who never express explicit stances. Earlier work has shown that using users' historical or non-relevant tweets can be used to predict stance. We build on prior work by making use of users' interaction elements, such as retweeted accounts and mentioned hashtags, to compute the similarities between users and to classify new users in a user similarity feature space. We show that this approach significantly improves stance prediction on two datasets that differ in terms of language, topic, and cultural background.
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