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Autores principales: Oluyele, Sunday, Akingbade, Juwon, Akinode, Victor
Formato: Preprint
Publicado: 2024
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Acceso en línea:https://arxiv.org/abs/2411.06477
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author Oluyele, Sunday
Akingbade, Juwon
Akinode, Victor
author_facet Oluyele, Sunday
Akingbade, Juwon
Akinode, Victor
contents Musicians frequently use social media to express their opinions, but they often convey different messages in their music compared to their posts online. Some utilize these platforms to abuse their colleagues, while others use it to show support for political candidates or engage in activism, as seen during the #EndSars protest. There are extensive research done on offensive language detection on social media, the usage of offensive language by musicians has received limited attention. In this study, we introduce VocalTweets, a code-switched and multilingual dataset comprising tweets from 12 prominent Nigerian musicians, labeled with a binary classification method as Normal or Offensive. We trained a model using HuggingFace's base-Twitter-RoBERTa, achieving an F1 score of 74.5. Additionally, we conducted cross-corpus experiments with the OLID dataset to evaluate the generalizability of our dataset.
format Preprint
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institution arXiv
publishDate 2024
record_format arxiv
spellingShingle VocalTweets: Investigating Social Media Offensive Language Among Nigerian Musicians
Oluyele, Sunday
Akingbade, Juwon
Akinode, Victor
Computation and Language
Machine Learning
Musicians frequently use social media to express their opinions, but they often convey different messages in their music compared to their posts online. Some utilize these platforms to abuse their colleagues, while others use it to show support for political candidates or engage in activism, as seen during the #EndSars protest. There are extensive research done on offensive language detection on social media, the usage of offensive language by musicians has received limited attention. In this study, we introduce VocalTweets, a code-switched and multilingual dataset comprising tweets from 12 prominent Nigerian musicians, labeled with a binary classification method as Normal or Offensive. We trained a model using HuggingFace's base-Twitter-RoBERTa, achieving an F1 score of 74.5. Additionally, we conducted cross-corpus experiments with the OLID dataset to evaluate the generalizability of our dataset.
title VocalTweets: Investigating Social Media Offensive Language Among Nigerian Musicians
topic Computation and Language
Machine Learning
url https://arxiv.org/abs/2411.06477