EXIST-2023: Sexism categorization (soft-soft)

Many facets of a woman’s life may be the focus of sexist attitudes including domestic and parenting roles, career opportunities, sexual image, and life expectations, to name a few. Automatically detecting which of these facets of women are being more frequently attacked in social networks will facilitate the development of policies to fight against sexism. In this task, each sexist tweet must be categorized in one or more of the following categories: IDEOLOGICAL AND INEQUALITY, STEREOTYPING AND DOMINANCE, OBJECTIFICATION, SEXUAL VIOLENCE, MISOGYNY AND NON-SEXUAL VIOLENCE.

Publication
Plaza, L. et al. (2023). Overview of EXIST 2023 – Learning with Disagreement for Sexism Identification and Characterization. In: Arampatzis, A., et al. Experimental IR Meets Multilinguality, Multimodality, and Interaction. CLEF 2023. Lecture Notes in Computer Science, vol 14163. Springer, Cham. https://doi.org/10.1007/978-3-031-42448-9_23
Language
Spanish
NLP topic
Abstract task
Dataset
Year
2023
Ranking metric
ICM

Task results

System ICM Sort ascending
roh-neil_1 0.6431
roh-neil_2 0.6431
UniBo_2 0.6055
AIT_FHSTP_1 0.5995
UniBo_1 0.5965
SINAI_2 0.5913
Mario_3 0.5578
Mario_2 0.5405
Mario_1 0.5305
SINAI_3 0.5213

If you have published a result better than those on the list, send a message to odesia-comunicacion@lsi.uned.es indicating the result and the DOI of the article, along with a copy of it if it is not published openly.