Towards Automated Sexual Violence Report Tracking
Tracking sexual violence is a challenging task. In this paper, we present a supervised learning-based automated sexual violence report tracking model that is more scalable, and reliable than its crowdsource based counterparts. We define the sexual violence report tracking problem by considering victim, perpetrator contexts and the nature of the violence. We find that our model could identify sexual violence reports with a precision and recall of 80.4 83.4 #MeToo movement. Several interesting findings are discovered which are not easily identifiable from a shallow analysis.
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