Hate speech may take different forms in online social environments. In this paper, we address the problem of automatic detection of misogynous language on Italian tweets by focusing both on raw text and stylometric profiles. The proposed exploratory investigation about the adoption of stylometry for enhancing the recognition capabilities of machine learning models has demonstrated that profiling users can lead to good discrimination of misogynous and not misogynous contents.

Fersini, E., Nozza, D., Boifava, G. (2020). Profiling Italian Misogynist: An Empirical Study. In LREC 2020 - Workshop Language Resources and Evaluation Conference, Resources and Techniques for User and Author Profiling in Abusive Language, ResT-UP 2020 - Proceedings (pp.9-13). European Language Resources Association (ELRA).

Profiling Italian Misogynist: An Empirical Study

Fersini, E
Primo
;
Nozza, D
Secondo
;
2020

Abstract

Hate speech may take different forms in online social environments. In this paper, we address the problem of automatic detection of misogynous language on Italian tweets by focusing both on raw text and stylometric profiles. The proposed exploratory investigation about the adoption of stylometry for enhancing the recognition capabilities of machine learning models has demonstrated that profiling users can lead to good discrimination of misogynous and not misogynous contents.
paper
Automatic Misogyny Identification; Stylometry;
English
1st Workshop on Resources and Techniques for User and Author Profiling in Abusive Language, ResT-UP 2020 - as part of the Language Resources and Evaluation Conference, LREC 2020 - 12 May 2020
2020
Monti, J; Basile, V; Di Buono, MP; Manna, R; Pascucci, A; Tonelli, S
LREC 2020 - Workshop Language Resources and Evaluation Conference, Resources and Techniques for User and Author Profiling in Abusive Language, ResT-UP 2020 - Proceedings
9791095546498
2020
9
13
https://www.aclweb.org/anthology/2020.restup-1.3/
none
Fersini, E., Nozza, D., Boifava, G. (2020). Profiling Italian Misogynist: An Empirical Study. In LREC 2020 - Workshop Language Resources and Evaluation Conference, Resources and Techniques for User and Author Profiling in Abusive Language, ResT-UP 2020 - Proceedings (pp.9-13). European Language Resources Association (ELRA).
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/10281/298211
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