Recognizing explicit and implicit hate speech using a weakly supervised two-path bootstrapping approach

L Gao, A Kuppersmith, R Huang - arXiv preprint arXiv:1710.07394, 2017 - arxiv.org
L Gao, A Kuppersmith, R Huang
arXiv preprint arXiv:1710.07394, 2017arxiv.org
In the wake of a polarizing election, social media is laden with hateful content. To address
various limitations of supervised hate speech classification methods including corpus bias
and huge cost of annotation, we propose a weakly supervised two-path bootstrapping
approach for an online hate speech detection model leveraging large-scale unlabeled data.
This system significantly outperforms hate speech detection systems that are trained in a
supervised manner using manually annotated data. Applying this model on a large quantity …
In the wake of a polarizing election, social media is laden with hateful content. To address various limitations of supervised hate speech classification methods including corpus bias and huge cost of annotation, we propose a weakly supervised two-path bootstrapping approach for an online hate speech detection model leveraging large-scale unlabeled data. This system significantly outperforms hate speech detection systems that are trained in a supervised manner using manually annotated data. Applying this model on a large quantity of tweets collected before, after, and on election day reveals motivations and patterns of inflammatory language.
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