Autores
Ta Hoang Thang
Rahman Abu Bakar Siddiqur
Gelbukh Alexander
Título Transfer Learning from Multilingual DeBERTa for Sexism Identification
Tipo Congreso
Sub-tipo Memoria
Descripción 2022 Iberian Languages Evaluation Forum, IberLEF 2022
Resumen In this paper, we address the Task 1 and Task 2 of the EXIST 2022 in detecting sexism in a broad sense, from ideological inequality, sexual violence, misogyny to other expressions that involve implicit sexist behaviours in social networks. We apply transfer learning from a pre-trained multilingual DeBERTa (mDeBERTa) model and its zero classification to gain a better performance than BERT-based approaches. Lastly, we combine all 3 methods: mDeBERTa, zero classification, and BERT for majority vote. For Task 1, mDeBERTa is the best method with an accuracy of 76.09% and F1 of 76.08%. Meanwhile, an accuracy of 66.26% and F1 of 47.06% are the best results in Task2, when using majority vote. Our main contribution is to use DeBERTa and zero classification with designing only one classifier in sexism identification. © 2022 Copyright for this paper by its authors. Use permitted under Creative Commons License Attribution 4.0 International (CC BY 4.0).
Observaciones CEUR Workshop Proceedings, v. 3202
Lugar Coruña
País España
No. de páginas
Vol. / Cap.
Inicio 2022-09-20
Fin
ISBN/ISSN