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arxiv: 1709.01895 · v1 · pith:6KTOJ22Hnew · submitted 2017-09-03 · 💻 cs.CL

A Semi-Supervised Approach to Detecting Stance in Tweets

classification 💻 cs.CL
keywords stancetweetscorpusdatasetdetectingdevelopingfeatureshashtags
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Stance classification aims to identify, for a particular issue under discussion, whether the speaker or author of a conversational turn has Pro (Favor) or Con (Against) stance on the issue. Detecting stance in tweets is a new task proposed for SemEval-2016 Task6, involving predicting stance for a dataset of tweets on the topics of abortion, atheism, climate change, feminism and Hillary Clinton. Given the small size of the dataset, our team created our own topic-specific training corpus by developing a set of high precision hashtags for each topic that were used to query the twitter API, with the aim of developing a large training corpus without additional human labeling of tweets for stance. The hashtags selected for each topic were predicted to be stance-bearing on their own. Experimental results demonstrate good performance for our features for opinion-target pairs based on generalizing dependency features using sentiment lexicons.

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