Investigating Deep Learning Approaches for Hate Speech Detection in
Social Media
- URL: http://arxiv.org/abs/2005.14690v1
- Date: Fri, 29 May 2020 17:28:46 GMT
- Title: Investigating Deep Learning Approaches for Hate Speech Detection in
Social Media
- Authors: Prashant Kapil, Asif Ekbal, Dipankar Das
- Abstract summary: The misuse of freedom of expression has led to the increase of various cyber crimes and anti-social activities.
Hate speech is one such issue that needs to be addressed very seriously as otherwise, this could pose threats to the integrity of the social fabrics.
In this paper, we proposed deep learning approaches utilizing various embeddings for detecting various types of hate speeches in social media.
- Score: 20.974715256618754
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: The phenomenal growth on the internet has helped in empowering individual's
expressions, but the misuse of freedom of expression has also led to the
increase of various cyber crimes and anti-social activities. Hate speech is one
such issue that needs to be addressed very seriously as otherwise, this could
pose threats to the integrity of the social fabrics.
In this paper, we proposed deep learning approaches utilizing various
embeddings for detecting various types of hate speeches in social media.
Detecting hate speech from a large volume of text, especially tweets which
contains limited contextual information also poses several practical
challenges.
Moreover, the varieties in user-generated data and the presence of various
forms of hate speech makes it very challenging to identify the degree and
intention of the message. Our experiments on three publicly available datasets
of different domains shows a significant improvement in accuracy and F1-score.
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