Siva@ HASOC-Dravidian-CodeMix-FIRE-2020: Multilingual Offensive Speech Detection in Code-mixed and Romanized Text

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2020

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CEUR-WS

Abstract

Detecting and eliminating offensive and hate speech in social media content is an important concern as hate and offensive speech can have serious consequences in society ranging from ill-education among youth to hate crimes. Offensive speech identification in countries like India poses several additional challenges due to the usage of code-mixed and romanized variants of multiple languages by the users in their posts on social media. HASOC-Dravidian-CodeMix - FIRE 2020 extended the task of offensive speech identification to Dravidian languages. In this paper, we describe our approach in HASOC Dravidian Code-mixed 2020, which topped two out of three tasks(F1-weighted scores - 0.95 and 0.90) and stood second in the third task lagging the top model only by 0.01 points((F1-weighted score - 0.77). We propose a novel and flexible approach of selective translation and transliteration to be able to reap better results out of fine-tuning and ensembling multilingual transformer networks like XLM-RoBERTa and mBERT. Further, we implemented pre-trained, fine-tuned and ensembled versions of XLM-RoBERTa for offensive speech classification. We open source our work to facilitate further experimentation.

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Computer Science, Offensive speech detection, Selective translation and transliteration, XLM-RoBERTa, Transformer Neural Networks

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