HateMonitors: Language Agnostic Abuse Detection in Social Media

Abstract

Reducing hateful and offensive content in online social media pose a dual problem for the moderators. On the one hand, rigid censorship on social media cannot be imposed. On the other, the free flow of such content cannot be allowed. Hence, we require efficient abusive language detection system to detect such harmful content in socialmedia. In this paper, we present our machine learning model, HateMonitor, developed for Hate Speech and Offensive Content Identification in Indo-European Languages (HASOC), a shared task at FIRE 2019.We have used Gradient Boosting model, along with BERT and LASER embeddings, to make the system language agnostic. Our model came at First position for the German sub-task A.

Publication
arXiv preprint arXiv:1909.12642

Main contributions

Coming soon

Limitations

Coming soon

Future Directions

Coming soon

Related