Abstract
Abusive language is an important issue in online communication across different platforms and languages. Having a robust model to detect abusive instances automatically is a prominent challenge. Several studies have been proposed to deal with this vital issue by modeling this task in the cross-domain and cross-lingual setting. This paper outlines and describes the current state of this research direction, providing an overview of previous studies, including the available datasets and approaches employed in both cross-domain and cross-lingual settings. This study also outlines several challenges and open problems of this area, providing insights and a useful roadmap for future work.
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Pamungkas, E. W., Basile, V., & Patti, V. (2023). Towards multidomain and multilingual abusive language detection: a survey. Personal and Ubiquitous Computing, 27(1), 17–43. https://doi.org/10.1007/s00779-021-01609-1
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