We target the complementary binary tasks of identifying whether a tweet is misogynous and, if that is the case, whether it is also aggressive. We compare two ways to address these problems: one multi-class model that discriminates between all the classes at once: not misogynous, non aggressive-misogynous and aggressive-misogynous; as well as a cascaded approach where the binary classification is carried out separately (misogynous vs non-misogynous and aggressive vs non-aggressive) and then joined together. For the latter, two training and three testing scenarios are considered. Our models are built on top of AlBERTo and are evaluated on the framework of Evalita{'}s 2020 shared task on automatic misogyny and aggressiveness identification in Italian tweets. Our cascaded models {---}including the strong na{\"\i}ve baseline{---} outperform significantly the top submissions to Evalita, reaching state-of-the-art performance without relying on any external information.

Misogyny and Aggressiveness Tend to Come Together and Together We Address Them

Muti Arianna
Primo
;
Fernicola Francesco;Barron-Cedeno Alberto
Ultimo
2022

Abstract

We target the complementary binary tasks of identifying whether a tweet is misogynous and, if that is the case, whether it is also aggressive. We compare two ways to address these problems: one multi-class model that discriminates between all the classes at once: not misogynous, non aggressive-misogynous and aggressive-misogynous; as well as a cascaded approach where the binary classification is carried out separately (misogynous vs non-misogynous and aggressive vs non-aggressive) and then joined together. For the latter, two training and three testing scenarios are considered. Our models are built on top of AlBERTo and are evaluated on the framework of Evalita{'}s 2020 shared task on automatic misogyny and aggressiveness identification in Italian tweets. Our cascaded models {---}including the strong na{\"\i}ve baseline{---} outperform significantly the top submissions to Evalita, reaching state-of-the-art performance without relying on any external information.
2022
Proceedings of the Thirteenth Language Resources and Evaluation Conference
4142
4148
Muti Arianna, Fernicola Francesco, Barron-Cedeno, Alberto
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11585/908149
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