2023
DOI: 10.21203/rs.3.rs-3355274/v1
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Bilingual Hate Speech Detection on Social Media : Amharic and Afaan Oromo

Teshome Mulugeta Ababu,
Michael Melese Woldeyohannis,
Emuye Bawok Getaneh

Abstract: Due to significant increases in internet penetration and the development of smartphone technology during the preceding couple of decades, many people have started using social media as a communication platform. Social media has grown to be one of the most significant components, with several benefits. However, technology also poses a number of threats, challenges, and barriers, such as hate speech, disinformation, and fake news. Hate speech detection is one of the many ways social media platforms can be accuse… Show more

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“…Domain-specific hate speech classification has been explored in studies such as [4] and [6], which developed specialized models for specific social contexts. Supervised machine learning models have been extensively examined by studies like [1] and [13], achieving promising results with various classifiers, including transformer-based language models. These findings highlight diverse avenues for effectively detecting hate speech, underscoring the need for continued research to address evolving trends and promote online safety.…”
Section: Related Workmentioning
confidence: 99%
“…Domain-specific hate speech classification has been explored in studies such as [4] and [6], which developed specialized models for specific social contexts. Supervised machine learning models have been extensively examined by studies like [1] and [13], achieving promising results with various classifiers, including transformer-based language models. These findings highlight diverse avenues for effectively detecting hate speech, underscoring the need for continued research to address evolving trends and promote online safety.…”
Section: Related Workmentioning
confidence: 99%