Spanish hate-speech detection in football

Esteban Montesinos-Cánovas, Francisco Garcia-Sánchez, José Antonio Garcia-Díaz, Gema Alcaraz-Mármol, Rafael Valencia-García-Sánchez

Resumen


In the last few years, Natural Language Processing (NLP) tools have been successfully applied to a number of different tasks, including author profiling, negation detection or hate speech detection, to name but a few. For the identification of hate speech from text, pre-trained language models can be leveraged to build highperforming classifiers using a transfer learning approach. In this work, we train and evaluate state-of-the-art pre-trained classifiers based on Transformers. The explored models are fine-tuned using a hate speech corpus in Spanish that has been compiled as part of this research. The corpus contains a total of 7,483 footballrelated tweets that have been manually annotated under four categories: aggressive, racist, misogynist, and safe. A multi-label approach is used, allowing the same tweet to be labeled with more than one class. The best results, with a macro F1-score of 88.713%, have been obtained by a combination of the models using Knowledge Integration.

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