The availability of large annotated corpora from social media and the development of powerful classification approaches have contributed in an unprecedented way to tackle the challenge of monitoring users' opinions and sentiments in online social platforms across time. Such linguistic data are strongly affected by events and topic discourse, and this aspect is crucial when detecting phenomena such as hate speech, especially from a diachronic perspective. We address this challenge by focusing on a real case study: the "Contro l'odio" platform for monitoring hate speech against immigrants in the Italian Twittersphere. We explored the temporal robustness of a BERT model for Italian (AlBERTo), the current benchmark on non-diachronic detection s...
Laaksonen, S-M.; Haapoja, J.; Kinnunen, T., Nelimarkka, M. & Pöyhtäri, R. (2020, accepted). . Fronti...
Sources, in the form of selected Facebook pages, can be used as indicators of hate-rich content. Pol...
The objective of this dissertation is to explore the use of machine learning algorithms in understan...
The use of abusive language online has become an increasingly pervasive problem that damages both in...
The automatic detection of hate speech online is an active research area in NLP. Most of the studies...
The task of identifying hate speech in social networks has recently attracted considerable interest ...
Hate speech may be the research focus of the interdisciplinary field of hate studies, but it is also...
International audienceThe increasing popularity of social media platforms like Twitter and Facebook ...
The detection of hate speech in social media is a crucial task. The uncontrolled spread of hate has ...
This paper explains the system developed for the Hate Speech Detection (HaSpeeDe) shared task within...
Social Media are sensors in the real world that can be used to measure the pulse of societies. Howev...
International audienceEnglish. Despite the number of approaches recently proposed in NLP for detecti...
The paper describes the Web platform built within the project “Contro l’Odio”, for monitoring and c...
Online debates are often characterised by extreme polarisation and heated discussions among users. ...
Social media platforms have evolved into an online representation of our social interactions. We may...
Laaksonen, S-M.; Haapoja, J.; Kinnunen, T., Nelimarkka, M. & Pöyhtäri, R. (2020, accepted). . Fronti...
Sources, in the form of selected Facebook pages, can be used as indicators of hate-rich content. Pol...
The objective of this dissertation is to explore the use of machine learning algorithms in understan...
The use of abusive language online has become an increasingly pervasive problem that damages both in...
The automatic detection of hate speech online is an active research area in NLP. Most of the studies...
The task of identifying hate speech in social networks has recently attracted considerable interest ...
Hate speech may be the research focus of the interdisciplinary field of hate studies, but it is also...
International audienceThe increasing popularity of social media platforms like Twitter and Facebook ...
The detection of hate speech in social media is a crucial task. The uncontrolled spread of hate has ...
This paper explains the system developed for the Hate Speech Detection (HaSpeeDe) shared task within...
Social Media are sensors in the real world that can be used to measure the pulse of societies. Howev...
International audienceEnglish. Despite the number of approaches recently proposed in NLP for detecti...
The paper describes the Web platform built within the project “Contro l’Odio”, for monitoring and c...
Online debates are often characterised by extreme polarisation and heated discussions among users. ...
Social media platforms have evolved into an online representation of our social interactions. We may...
Laaksonen, S-M.; Haapoja, J.; Kinnunen, T., Nelimarkka, M. & Pöyhtäri, R. (2020, accepted). . Fronti...
Sources, in the form of selected Facebook pages, can be used as indicators of hate-rich content. Pol...
The objective of this dissertation is to explore the use of machine learning algorithms in understan...