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A publicação pode ser exportada nos seguintes formatos: referência da APA (American Psychological Association), referência do IEEE (Institute of Electrical and Electronics Engineers), BibTeX e RIS.

Exportar Referência (APA)
Ramos, G., Batista, F., Ribeiro, R., Fialho, P., Moro, S., Fonseca, A....Silva, C. (2024). Leveraging transfer learning for hate speech detection in Portuguese social media posts. IEEE Access. 12, 101374-101389
Exportar Referência (IEEE)
G. A. Ramos et al.,  "Leveraging transfer learning for hate speech detection in Portuguese social media posts", in IEEE Access, vol. 12, pp. 101374-101389, 2024
Exportar BibTeX
@article{ramos2024_1734883324099,
	author = "Ramos, G. and Batista, F. and Ribeiro, R. and Fialho, P. and Moro, S. and Fonseca, A. and Guerra, R. and Carvalho, P. and Marques, C. and Silva, C.",
	title = "Leveraging transfer learning for hate speech detection in Portuguese social media posts",
	journal = "IEEE Access",
	year = "2024",
	volume = "12",
	number = "",
	doi = "10.1109/ACCESS.2024.3430848",
	pages = "101374-101389",
	url = "https://ieeexplore.ieee.org/xpl/RecentIssue.jsp?punumber=6287639"
}
Exportar RIS
TY  - JOUR
TI  - Leveraging transfer learning for hate speech detection in Portuguese social media posts
T2  - IEEE Access
VL  - 12
AU  - Ramos, G.
AU  - Batista, F.
AU  - Ribeiro, R.
AU  - Fialho, P.
AU  - Moro, S.
AU  - Fonseca, A.
AU  - Guerra, R.
AU  - Carvalho, P.
AU  - Marques, C.
AU  - Silva, C.
PY  - 2024
SP  - 101374-101389
SN  - 2169-3536
DO  - 10.1109/ACCESS.2024.3430848
UR  - https://ieeexplore.ieee.org/xpl/RecentIssue.jsp?punumber=6287639
AB  - The rapid rise of social media has brought about new ways of digital communication, along with a worrying increase in online hate speech (HS), which, in turn, has led researchers to develop several Natural Language Processing methods for its detection. Although significant strides have been made in automating HS detection, research focusing on the European Portuguese language remains scarce (as it happens in several under-resourced languages). To address this gap, we explore the efficacy of various transfer learning models, which have been shown in the literature to have better performance for this task than other Deep Learning models. We employ BERT-like models pre-trained on Portuguese text, such as BERTimbau and mDeBERTa, as well as GPT, Gemini and Mistral generative models, for the detection of HS within Portuguese online discourse. Our study relies on two annotated corpora of YouTube comments and tweets, both annotated as HS and non-HS. Our findings show that the best model for the YouTube corpus was a variant of BERTimbau retrained with European Portuguese tweets and fine-tuned for the HS task, with an F-score of 87.1% for the positive class, outperforming the baseline models by more than 20% and with a 1.8% increase compared with base BERTimbau. The best model for the Twitter corpus was GPT-3.5, with an F-score of 50.2% for the positive class. We also assess the impact of using in-domain and mixed-domain training sets, as well as the impact of providing context in generative model prompts on their performance.
ER  -