Combining Textual Features for the Detection of Hateful and Offensive Language

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Date
2021
Volume
3159
Issue
Journal
CEUR workshop proceedings
Series Titel
Book Title
FIRE-WN 2021: FIRE 2021 Working Notes
Publisher
Aachen, Germany : RWTH Aachen
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Abstract

The detection of offensive, hateful and profane language has become a critical challenge since many users in social networks are exposed to cyberbullying activities on a daily basis. In this paper, we present an analysis of combining different textual features for the detection of hateful or offensive posts on Twitter. We provide a detailed experimental evaluation to understand the impact of each building block in a neural network architecture. The proposed architecture is evaluated on the English Subtask 1A: Identifying Hate, offensive and profane content from the post datasets of HASOC-2021 dataset under the team name TIB-VA. We compared different variants of the contextual word embeddings combined with the character level embeddings and the encoding of collected hate terms.

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Citation
Hakimov, S., & Ewerth, R. (2021). Combining Textual Features for the Detection of Hateful and Offensive Language (P. Mehta, T. Mandl, P. Majumder, & M. Mitra, eds.) [P. Mehta, T. Mandl, P. Majumder, & M. Mitra, eds.]. Aachen, Germany : RWTH Aachen.
License
CC BY 4.0 Unported