We describe our participation in the EVALITA 2020 (Basile et al., 2020) shared task on Automatic Misogyny Identification. We focus on task A —Misogyny and Aggressive Behaviour Identification— which aims at detecting whether a tweet in Italian is misogynous and, if so, whether it is aggressive. Rather than building two different models, one for misogyny and one for aggressiveness identification, we handle the problem as one single multi-label classification task, considering three classes: non-misogynous, non-aggressive misogynous, and aggressive misogynous. Our three-class supervised model, built on top of AlBERTo, obtains an overall F1 score of 0.7438 on the task test set (F1 = 0.8102 for the misogyny and F1 = 0.6774 for the aggressiveness...
The thesis is devoted to the problem of misogyny detection in social media. In the work we analyse t...
This article presents a survey of automated misogyny identification techniques in social media, espe...
The task of identifying hate speech in social networks has recently attracted considerable interest ...
We describe our participation in the EVALITA 2020 (Basile et al., 2020) shared task on Automatic Mis...
en We present a multi-agent classification solution for identifying misogynous and aggressive conten...
We present a multi-agent classification solution for identifying misogynous and aggressive content i...
In this report, we present a set of vanilla classifiers that we used to identify misogynous and aggr...
Automatic Misogyny Identification (AMI) is a shared task proposed at the Evalita 2020 evaluation cam...
In this article, we describe two classification models (a Convolutional Neural Network and a Logisti...
The problem of online misogyny and women-based offending has become increasingly widespread, and the...
[EN] Misogyny is a multifaceted phenomenon and can be linguistically manifested in numerous ways. Th...
The presence of misogynistic contents is one of the most crucial problems of social networks. In thi...
This paper describes the system that team YNU_OXZ submitted for EVALITA 2020. We participate in the ...
In this research report we will address the problem of misogyny identification on Italian tweets by ...
This article describes a possible solution for Automatic Misogyny Identification (AMI) Shared Task a...
The thesis is devoted to the problem of misogyny detection in social media. In the work we analyse t...
This article presents a survey of automated misogyny identification techniques in social media, espe...
The task of identifying hate speech in social networks has recently attracted considerable interest ...
We describe our participation in the EVALITA 2020 (Basile et al., 2020) shared task on Automatic Mis...
en We present a multi-agent classification solution for identifying misogynous and aggressive conten...
We present a multi-agent classification solution for identifying misogynous and aggressive content i...
In this report, we present a set of vanilla classifiers that we used to identify misogynous and aggr...
Automatic Misogyny Identification (AMI) is a shared task proposed at the Evalita 2020 evaluation cam...
In this article, we describe two classification models (a Convolutional Neural Network and a Logisti...
The problem of online misogyny and women-based offending has become increasingly widespread, and the...
[EN] Misogyny is a multifaceted phenomenon and can be linguistically manifested in numerous ways. Th...
The presence of misogynistic contents is one of the most crucial problems of social networks. In thi...
This paper describes the system that team YNU_OXZ submitted for EVALITA 2020. We participate in the ...
In this research report we will address the problem of misogyny identification on Italian tweets by ...
This article describes a possible solution for Automatic Misogyny Identification (AMI) Shared Task a...
The thesis is devoted to the problem of misogyny detection in social media. In the work we analyse t...
This article presents a survey of automated misogyny identification techniques in social media, espe...
The task of identifying hate speech in social networks has recently attracted considerable interest ...